SlideShare una empresa de Scribd logo
1 de 65
Descargar para leer sin conexión
Black Box Learning Analytics?
Beyond Algorithmic Transparency
Simon Buckingham Shum
Professor of Learning Informatics
Director, UTS Connected Intelligence Centre
@sbuckshum • Simon.BuckinghamShum.net
utscic.edu.au
Learning Analytics Summer Institute, Ann Arbor, June 2017
https://twitter.com/Wiswijzer2/status/414055472451575808
2
“Note:	check	the	huge	
difference	between	
knowing	and	
measuring…”
3
I was speaking at this event
http://codeactsineducation.wordpress.com
4
I asked Siri to find the conference website…
“Find code acts in
education”
5
“Find code acts in
education”
I asked Siri to find the conference website…
6
https://www.youtube.com/watch?v=Dlr4O1aEJvI&sns=em
Societal impact of data science is now reaching mass audiences
7
https://weaponsofmathdestructionbook.com •	http://datasociety.net •	http://artificialinteligencenow.com
•	https://obamawhitehouse.archives.gov/blog/2016/05/04/big-risks-big-opportunities-intersection-big-data-and-civil-rights
thought
experiment
A student warning system, somewhere near you…
Student: “Being told by the LMS every time I login that I’m at
grave risk of failing is stressful. I already informed Student
Services about my disability and recent bereavement, and I’m
working with my tutor to catch up…”
A student warning system, somewhere near you…
University: “Don’t worry it’s nothing
personal. It’s just the algorithm.”
Student: “Being told by the LMS every time I login that I’m at
grave risk of failing is stressful. I already informed Student
Services about my disability and recent bereavement, and I’m
working with my tutor to catch up…”
A social network visualisation, somewhere near you…
Student: “Being picked out like this as some
sort of loner makes me feel uncomfortable…
I chat with peers all the time in the cafes.”
A social network visualisation, somewhere near you…
Student: “Being picked out like this as some
sort of loner makes me feel uncomfortable…
I chat with peers all the time in the cafes.”
University: “Don’t worry it’s nothing
personal. It’s just the algorithm.”
What would it mean for learning analytics to be
accountable?
…there’s intense societal interest right now in
algorithms
Algorithms are generating huge interest in the
media, policy, social justice, and academia
In	an	increasingly	algorithmic	world	[…]	
What,	then,	do	we	talk	about	when	we	
talk	about	“governing	algorithms”?
http://governingalgorithms.org
Be afraid: unaccountable algorithms are
counting our money – and our other assets
15
http://www.lse.ac.uk/newsAndMedia/videoAndAudio/channels/publicLecturesAndEvents/player.aspx?id=3350
#AlgorithmicAccountability
Algorithms that make you Accountable
more objectively, efficiently and rewardingly than a human can
17
Meaning 1
18
Making
Algorithms that make you Accountable
Accountable
Meaning 2
19
We must be able to open the black box
(Frank Pasquale)
Statisticians / Data Miners
Programmers
Computer Scientists
Social Scientists
Designers
Historians
Lawyers
Policy Makers
Business Entrepreneurs
20
A topic now
engaging
diverse
expertises…
21
22
What are Algorithms?
abstract rules for transforming data
which to exert influence require
programming as executable code
operating on data structures
running on a platform
in an increasingly distributed architecture
Paul Dourish: The Social Lives of Algorithms. Lecture, 23 Feb. 2016, University of Melbourne. http://www.eng.unimelb.edu.au/engage/events/lectures/dourish-2016
What makes algorithms opaque?
intentional secrecy
technical illiteracy
complexity of infrastructure
23Burrell, J. (2016). How the machine ‘thinks’: Understanding opacity in machine learning algorithms. Big Data & Society 3(1). http://doi.org/10.1177/2053951715622512
24Paul Dourish: The Social Lives of Algorithms. Lecture, 23 Feb. 2016, University of Melbourne. http://www.eng.unimelb.edu.au/engage/events/lectures/dourish-2016
Algorithms are not to be found ‘in’ Pasquale’s black box
‘Algorithms’ are abstractions invented by computer scientists, mathematicians, etc.
They may be impossible to reverse engineer from a live, material, distributed system.
To understand them as phenomena, and perhaps to call them to account, we need to
ask how they were conceived, with what intent, who sanctioned their implementation,
etc… (Paul Dourish)
#LearningAnalytics
See the Society for Learning Analytics Research: http://SoLAResearch.org
#AlgorithmicAccountability
#AlgorithmicAccountability
Learning Analytics
System Integrity
Algorithms don’t act, it’s the whole system that counts
Ananny, M., 2016. Toward an Ethics of Algorithms: Convening, Observation, Probability, and Timeliness. Science, Technology & Human Values, 41(1), pp.93–117
“Algorithmic Assemblages” are more useful units of analysis
Aggregation
inferring associations
Classification
inferring boundaries
Temporality
inferring when to act
algo code
work practices
cultural norms
Stakeholders in a Learning Analytics system
Ethical	Principles
Educational/Learning	
Sciences	researcher
Learning	Theory
Algorithm
Learning	Analytics
Researcher
Educator
Learner
Learning	Outcomes
Educational	Insights
Programmer
Software,	Hardware
User	Interface
Data
Educational/Learning	
Sciences	researcher
Programmer
Software,	Hardware
Educator
Learner
Ethical	Principles
Algorithm
Learning	Outcomes
Learning	Theory
Learning	Analytics
Researcher
User	Interface
Educational	Insights
Some accountability relationships in an analytics system
Data
Forms of Algorithmic Accountability in Learning Analytics
Human-Centred
Informatics
Lenses
Computer Science
Data Science
User-Centred Design
Learning Technology
Human-Data Interaction
Ethics of Technology
Legal
Accountability…?
Educational/Learning	
Sciences	researcher
Programmer
Software,	Hardware
Educator
Learner
Ethical	Principles
Algorithm
Learning	Outcomes
Learning	Theory
Learning	Analytics
Researcher
User	Interface
Educational	Insights
Accountability in terms of: Ethics of Technology
Data
Accountability in terms of: Ethics of Technology
Teleological critique: do the analytics lead to consequences
that we value?
Virtues critique: What are the values implicit/explicit in
the design (at every level), and do stakeholders perceive
and use the system as intended? (cf. HCI Claims Analysis)
Ethics of
Technology
Deontological critique: do the analytics produce results that
satisfy current duties/rules/policies/principles, and/or
correspond with how we already classify the world?
Ananny, M., 2016. Toward an Ethics of Algorithms: Convening, Observation, Probability, and Timeliness. Science, Technology & Human Values, 41(1), pp.93–117
…but for an emerging field, esp. with personalisation, D & T can be challenging to apply
Educational/Learning	
Sciences	researcher
Programmer
Software,	Hardware
Educator
Learner
Ethical	Principles
Algorithm
Learning	Outcomes
Learning	Theory
Learning	Analytics
Researcher
User	Interface
Educational	Insights
Accountability in terms of: Computer Science
Data
Accountability in terms of: Computer Science
Computer
Science
Source code availability: to what extent can developers
inspect and test the source code?
Algorithmic Integrity: does the running code
(code+data+platform) operationalise the algorithm with
integrity? Is it possible to reverse engineer the algorithm
from the system?
Source code maintainability: how easily can a developer
modify the source code?
System output intelligibility: can we understand why the
implemented system generates its outputs under different
conditions? (a particular issue with machine learning)
Educational/Learning	
Sciences	researcher
Programmer
Software,	Hardware
Educator
Learner
Ethical	Principles
Algorithm
Learning	Outcomes
Learning	Theory
Learning	Analytics
Researcher
User	Interface
Educational	Insights
Accountability in terms of: Data Science
Data Training	
Data
Accountability in terms of: Data Science
Data Science
Model Integrity: for machine learning, do the target
variables and class labels embody discriminatory bias?
Training Data Integrity: for machine learning, does the
training set embody discriminatory bias?
Feature Selection Integrity: does the discriminatory power of
features do justice to the complexity of the phenomenon?
Proxy Integrity: do apparent proxy features for a target
quality embody discriminatory bias?
Barocas, S. and A. Selbst (In Press). Big Data's Disparate Impact. California Law Review 104. Preprint: http://papers.ssrn.com/sol3/papers.cfm?abstract_id=2477899
Algorithmic shortlisting for interview
http://www.nytimes.com/2015/06/26/upshot/can-an-algorithm-hire-better-than-a-human.html?_r=0
(fictional scenario)
Ascilite 2011 Keynote: Slide 77: http://people.kmi.open.ac.uk/sbs/2011/12/learning-analytics-ascilite2011-keynote
Obviously no
university would
vet student
applications by
algorithm…
K
Stella Lowry & Gordon Macpherson, A Blot on the Profession, 296 BRITISH MEDICAL J. 657 (1988).
http://www.theguardian.com/news/datablog/2013/aug/14/problem-with-algorithms-magnifying-misbehaviour
Obviously no
university would
vet student
applications by
algorithm…
L
Returning to algorithmic staff recruitment…
41
“It is dangerously naïve, however, to
believe that big data will automatically
eliminate human bias from the decision-
making process.
…inherit the prejudices of prior decision-
makers
…reflect the widespread biases that
persist in society
…Discover …regularities that are really
just preexisting patterns of exclusion and
inequality.”
Written Testimony of Solon Barocas: U.S. Equal Employment Opportunity Commission, Meeting of July 1, 2015 - EEOC at 50: Progress and Continuing Challenges in
Eradicating Employment Discrimination. http://www1.eeoc.gov//eeoc/meetings/7-1-15/barocas.cfm?renderforprint=1
Returning to algorithmic staff recruitment…
42
“…Adopted or applied without care,
data mining can deny historically
disadvantaged and vulnerable groups
full participation in society.”
“…it can be unusually hard to identify
the source of the problem, to explain
it to a court, or to remedy it technically
or through legal action.”
Written Testimony of Solon Barocas: U.S. Equal Employment Opportunity Commission, Meeting of July 1, 2015 - EEOC at 50: Progress and Continuing Challenges in
Eradicating Employment Discrimination. http://www1.eeoc.gov//eeoc/meetings/7-1-15/barocas.cfm?renderforprint=1
Educational/Learning	
Sciences	researcher
Programmer
Software,	Hardware
Educator
Ethical	Principles
Algorithm
Learning	Outcomes
Learning	Theory
Learning	Analytics
Researcher
User	Interface
Educational	Insights
Accountability in terms of: Human-Data Interaction
Data
Learner
Accountability in terms of: Human-Data Interaction
Human-Data
Interaction
“Accountable Data Transactions”: does the data
infrastructure have clear protocols for personal data
requests, permission, and audit?
Crabtree, A. and R. Mortier (2015). Human Data Interaction: Historical Lessons from Social Studies and CSCW. Proc. European Conference on Computer Supported
Cooperative Work, Oslo (19-23 Sept 2015), Springer: London. Preprint: http://mor1.github.io/publications/pdf/ecscw15-hdi.pdf
Social Data Infrastructure: as interactions around data are
formalised and automated, can this infrastructure be held to
account?
Collective Data Ownership: is collectively owned data
handled in ways that preserve individual rights?
User Agency: to what degree do citizens have control over
who accesses their data, and can they comprehend what
analysis will be done, and by whom?
Educational/Learning	
Sciences	researcher
Programmer
Software,	Hardware
Educator
Learner
Ethical	Principles
Algorithm
Learning	Outcomes
Learning	Theory
Learning	Analytics
Researcher
User	Interface
Educational	Insights
Accountability in terms of: User-Centred Design
Data
Design	Process
Accountability in terms of: User-Centred Design
Intelligibility: what, if any, explanation can a user ask the
analytic system to provide about its behaviour, can they
understand the answers, and can they give feedback?
Participatory Design: to what extent are stakeholders (e.g.
academics; instructors; students) involved in the system
design process, and are there interfaces for them to modify the
deployed system’s behaviour?
User-Centred
Design
User Sensemaking: who are the target end-users, do they
understand the analytic output, and can they take appropriate
action based on it?
Educational/Learning	
Sciences	researcher
Programmer
Software,	Hardware
Educator
Learner
Ethical	Principles
Algorithm
Learning	Outcomes
Learning	Theory
Learning	Analytics
Researcher
User	Interface
Educational	Insights
Accountability in terms of:
Learning Sciences & Educational Technology
Data
Accountability in terms of:
Learning Sciences & Educational Technology
Improved Learning: in what ways do learners benefit from
using the system?
Improved Teaching: in what ways do educators benefit
from using the system?
Learning
Sciences &
Educational
Technology
Conceptual Integrity: does the algorithm implement the
intended constructs (theory/model/rubric…) with integrity?
Conceptual Integrity: is the data congruent with other
sources of educational evidence?
worked example 1
analytics for professional,
academic, reflective writing
Buckingham Shum, S., Á. Sándor, R. Goldsmith, X. Wang, R. Bass and M. McWilliams (2016). Reflecting on Reflective Writing Analytics: Assessment Challenges and Iterative Evaluation of a
Prototype Tool. 6th International Learning Analytics & Knowledge Conference (LAK16), Edinburgh, UK, April 25 - 29 2016, ACM, New York, NY. http://dx.doi.org/10.1145/2883851.2883955
Automated formative feedback on writing (Civil Law)
Automated formative feedback on writing (Civil Law)
COMPARISON OF HUMAN VS. MACHINE
52
human highlighting automated highlighting
Example accountability analysis: writing feedback
53
Ethics: Does the system output results that match human analysts? Does instant feedback
lead to novel benefits, or is it in fact damaging to students? What is the motivation behind
the focus on reflection (e.g. rather than factual accuracy)?
Computer Science: Does the NLP platform implement the linguistic features with integrity?
Data Science: Do the linguistic features have sufficient discriminatory power? Do they
ignore important qualities of value? Do they bias against certain kinds of student?
Human-Data Interaction: Do students consent to their writing being analysed?
User-Centred Design: Were students and educators involved in the design of the system?
Can they make sense of the user interface and act on output?
Learning Technology: What is the educational basis for the parser rules? Does the
algorithm implement the theory/rubric with integrity? Educator/student reaction?
Legal: Could a student sue the university for parser errors, or discrimination?
worked example 2
building and visualizing
a student social network
Kitto, K. et al. (2016). The Connected Learning Analytics Toolkit. 6th International Learning Analytics & Knowledge Conference (LAK16), Edinburgh, UK, April 25 - 29 2016,
ACM, New York, NY. http://beyondlms.org
Social Network Visualisation of student activity
55Connected Learning Analytics Toolkit: http://beyondlms.org
Example accountability analysis: SNA visualisation
56
Ethics: Do users validate the social networks? Does the system lead to novel benefits?
What is the motivation behind the design of the system?
Computer Science: Does the social network tool implement SNA metrics correctly?
Data Science: Is the dataset biased or incomplete in important respects? Does the social
network visualization bias against certain kinds of student?
Human-Data Interaction: Should students be permitted to control their degree of visibility
on different platforms? Does disclosing peer data to a student violate peers’ rights?
User-Centred Design: Were students and educators involved in the design of the system?
Can they make sense of the user interface and act on output?
Learning Technology: What is the educational rationale for making social ties visible? Do
the selected user actions implement this with integrity? Do students find it helpful?
Legal: Could a student sue for discrimination due to the network map?
approaches to designing for
Learning Analytic System Integrity
Participatory design methods that build trust
Carlos G. Prieto-Alvarez, Roberto Martinez-Maldonado, Theresa Anderson (In Press). Co-designing in Learning Analytics: Tools and Techniques. In:
Jason Lodge, Jared Cooney Horvath & Linda Corrin (Eds.), From data and analytics to the classroom: Translating learning analytics for teachers.
Communicating the algorithm to educators and students?
Milligan, S. and Oliveira, E. (2017). Design features that make assessment analytics trustworthy: a case study.
DesignLAK17 Workshop, LAK17, Vancouver, March 2017. https://sites.google.com/site/designlak17
60
Milligan, S. and Griffin, P. (2016).
Understanding learning and learning
design in MOOCs: A measurement-based
interpretation. Journal of Learning
Analytics, 3(2), 88– 115.
http://dx.doi.org/10.18608/jla.2016.32.5
“Capability to
learn in
scaled
environments”
Make the mapping from
clicks to constructs
explicit
ETHICAL DESIGN CRITIQUE (EDC) PROCESS
Prototype Analytics
Tool received
EDC Review
Document
prepared
EDC
Workshop
records
issues
Core Team
reviews &
responds
EDC
Workshop
participants
approve
CIO, DVC(ES) &
(CS) Signoff
Analytics
Tool
deployed
CIC team
Pro-VC Education
Equity & Diversity Unit
Planning & Quality Unit
IT Division
Director, Risk
Director, Teaching Innovation
Data Privacy Officer
Indigenous Students Centre
EDC: ETHICAL DESIGN CRITIQUE
62
EDC: ETHICAL DESIGN CRITIQUE
The EDC Template
<insert screenshot of dashboard element>
EDC team is invited to comment on:
Strengths
• e.g. Data is at an appropriate level that it does not
disclose inappropriate information about a cohort
or individuals
63
EDC: ETHICAL DESIGN CRITIQUE
Indicate concerns e.g.
• Data is displayed from incomplete sources, or has been filtered in ways,
that users might not expect (Specify why this violates expectations)
• Data is shown for which there is no apparent reasonable use
(Recommend removal)
• There is scope for misinterpretation due to poor design
(Suggest improvement)
• This data is useful but could be inappropriately used
(Caution and specify examples of inappropriate usage)
64
Conclusion: a new career in the
Learning Analytics profession?
“Certified LASI Engineer”
Trained to audit Learning Analytics System Integrity
at multiple levels, via multiple lenses
-> New principles to guide design, vendor selection,
academic peer review (and maybe legal deliberation)

Más contenido relacionado

La actualidad más candente

Artificial Intelligence AI in Libraries Training for Innovation Webinar
Artificial Intelligence  AI in Libraries Training for Innovation WebinarArtificial Intelligence  AI in Libraries Training for Innovation Webinar
Artificial Intelligence AI in Libraries Training for Innovation WebinarSaid Ali Said
 
Writing Analytics for Epistemic Features of Student Writing #icls2016 talk
Writing Analytics for Epistemic Features of Student Writing #icls2016 talkWriting Analytics for Epistemic Features of Student Writing #icls2016 talk
Writing Analytics for Epistemic Features of Student Writing #icls2016 talkSimon Knight
 
What's up at Kno.e.sis?
What's up at Kno.e.sis? What's up at Kno.e.sis?
What's up at Kno.e.sis? Amit Sheth
 
Making Decisions in a World Awash in Data: We’re going to need a different bo...
Making Decisions in a World Awash in Data: We’re going to need a different bo...Making Decisions in a World Awash in Data: We’re going to need a different bo...
Making Decisions in a World Awash in Data: We’re going to need a different bo...Micah Altman
 
Fleeing from Frankenstein and meeting Kafka on the way: Algorithmic decisio...
Fleeing from Frankenstein and meeting Kafka on  the way: Algorithmic  decisio...Fleeing from Frankenstein and meeting Kafka on  the way: Algorithmic  decisio...
Fleeing from Frankenstein and meeting Kafka on the way: Algorithmic decisio...University of South Africa (Unisa)
 
Analíticas del aprendizaje: una perspectiva crítica
Analíticas del aprendizaje: una perspectiva críticaAnalíticas del aprendizaje: una perspectiva crítica
Analíticas del aprendizaje: una perspectiva críticaCENT
 
Bias in AI-systems: A multi-step approach
Bias in AI-systems: A multi-step approachBias in AI-systems: A multi-step approach
Bias in AI-systems: A multi-step approachEirini Ntoutsi
 
Data, Responsibly: The Next Decade of Data Science
Data, Responsibly: The Next Decade of Data ScienceData, Responsibly: The Next Decade of Data Science
Data, Responsibly: The Next Decade of Data ScienceUniversity of Washington
 
Analysing User Knowledge, Competence and Learning during Online Activities
Analysing User Knowledge, Competence and Learning during Online ActivitiesAnalysing User Knowledge, Competence and Learning during Online Activities
Analysing User Knowledge, Competence and Learning during Online ActivitiesStefan Dietze
 
Fairness-aware learning: From single models to sequential ensemble learning a...
Fairness-aware learning: From single models to sequential ensemble learning a...Fairness-aware learning: From single models to sequential ensemble learning a...
Fairness-aware learning: From single models to sequential ensemble learning a...Eirini Ntoutsi
 
Mining and Understanding Activities and Resources on the Web
Mining and Understanding Activities and Resources on the WebMining and Understanding Activities and Resources on the Web
Mining and Understanding Activities and Resources on the WebStefan Dietze
 
Sentiment Analysis of Social Media Content: A multi-tool for listening to you...
Sentiment Analysis of Social Media Content: A multi-tool for listening to you...Sentiment Analysis of Social Media Content: A multi-tool for listening to you...
Sentiment Analysis of Social Media Content: A multi-tool for listening to you...Eirini Ntoutsi
 
What role do “power learners” play in online learning communities?
What role do “power learners” play in online learning communities?What role do “power learners” play in online learning communities?
What role do “power learners” play in online learning communities?@cristobalcobo
 
Interactive Innovation Through Social Software And Web 2.0
Interactive Innovation Through Social Software And Web 2.0Interactive Innovation Through Social Software And Web 2.0
Interactive Innovation Through Social Software And Web 2.0Thomas Ryberg
 

La actualidad más candente (20)

Artificial Intelligence AI in Libraries Training for Innovation Webinar
Artificial Intelligence  AI in Libraries Training for Innovation WebinarArtificial Intelligence  AI in Libraries Training for Innovation Webinar
Artificial Intelligence AI in Libraries Training for Innovation Webinar
 
Writing Analytics for Epistemic Features of Student Writing #icls2016 talk
Writing Analytics for Epistemic Features of Student Writing #icls2016 talkWriting Analytics for Epistemic Features of Student Writing #icls2016 talk
Writing Analytics for Epistemic Features of Student Writing #icls2016 talk
 
ETHICS IN E-LEARNING. Elif TOPRAK & others
ETHICS IN E-LEARNING. Elif TOPRAK  & othersETHICS IN E-LEARNING. Elif TOPRAK  & others
ETHICS IN E-LEARNING. Elif TOPRAK & others
 
What's up at Kno.e.sis?
What's up at Kno.e.sis? What's up at Kno.e.sis?
What's up at Kno.e.sis?
 
Making Decisions in a World Awash in Data: We’re going to need a different bo...
Making Decisions in a World Awash in Data: We’re going to need a different bo...Making Decisions in a World Awash in Data: We’re going to need a different bo...
Making Decisions in a World Awash in Data: We’re going to need a different bo...
 
Urban Data Science at UW
Urban Data Science at UWUrban Data Science at UW
Urban Data Science at UW
 
Mike Thelwall: Introduction to Webometrics
Mike Thelwall: Introduction to WebometricsMike Thelwall: Introduction to Webometrics
Mike Thelwall: Introduction to Webometrics
 
Fleeing from Frankenstein and meeting Kafka on the way: Algorithmic decisio...
Fleeing from Frankenstein and meeting Kafka on  the way: Algorithmic  decisio...Fleeing from Frankenstein and meeting Kafka on  the way: Algorithmic  decisio...
Fleeing from Frankenstein and meeting Kafka on the way: Algorithmic decisio...
 
Analíticas del aprendizaje: una perspectiva crítica
Analíticas del aprendizaje: una perspectiva críticaAnalíticas del aprendizaje: una perspectiva crítica
Analíticas del aprendizaje: una perspectiva crítica
 
Bias in AI-systems: A multi-step approach
Bias in AI-systems: A multi-step approachBias in AI-systems: A multi-step approach
Bias in AI-systems: A multi-step approach
 
Data, Responsibly: The Next Decade of Data Science
Data, Responsibly: The Next Decade of Data ScienceData, Responsibly: The Next Decade of Data Science
Data, Responsibly: The Next Decade of Data Science
 
Analysing User Knowledge, Competence and Learning during Online Activities
Analysing User Knowledge, Competence and Learning during Online ActivitiesAnalysing User Knowledge, Competence and Learning during Online Activities
Analysing User Knowledge, Competence and Learning during Online Activities
 
Fairness-aware learning: From single models to sequential ensemble learning a...
Fairness-aware learning: From single models to sequential ensemble learning a...Fairness-aware learning: From single models to sequential ensemble learning a...
Fairness-aware learning: From single models to sequential ensemble learning a...
 
Science Data, Responsibly
Science Data, ResponsiblyScience Data, Responsibly
Science Data, Responsibly
 
Mining and Understanding Activities and Resources on the Web
Mining and Understanding Activities and Resources on the WebMining and Understanding Activities and Resources on the Web
Mining and Understanding Activities and Resources on the Web
 
Trust Management: A Tutorial
Trust Management: A TutorialTrust Management: A Tutorial
Trust Management: A Tutorial
 
Sentiment Analysis of Social Media Content: A multi-tool for listening to you...
Sentiment Analysis of Social Media Content: A multi-tool for listening to you...Sentiment Analysis of Social Media Content: A multi-tool for listening to you...
Sentiment Analysis of Social Media Content: A multi-tool for listening to you...
 
What role do “power learners” play in online learning communities?
What role do “power learners” play in online learning communities?What role do “power learners” play in online learning communities?
What role do “power learners” play in online learning communities?
 
Context Aware Harassment Detection in Social Media [Overview]
Context Aware Harassment Detection in Social Media [Overview]Context Aware Harassment Detection in Social Media [Overview]
Context Aware Harassment Detection in Social Media [Overview]
 
Interactive Innovation Through Social Software And Web 2.0
Interactive Innovation Through Social Software And Web 2.0Interactive Innovation Through Social Software And Web 2.0
Interactive Innovation Through Social Software And Web 2.0
 

Similar a Black Box Learning Analytics? Beyond Algorithmic Transparency

Algorithmic Accountability & Learning Analytics (UCL)
Algorithmic Accountability & Learning Analytics (UCL)Algorithmic Accountability & Learning Analytics (UCL)
Algorithmic Accountability & Learning Analytics (UCL)Simon Buckingham Shum
 
Big Data Analytics : Understanding for Research Activity
Big Data Analytics : Understanding for Research ActivityBig Data Analytics : Understanding for Research Activity
Big Data Analytics : Understanding for Research ActivityAndry Alamsyah
 
The Ethical Maze to Be Navigated: AI Bias in Data Science and Technology.
The Ethical Maze to Be Navigated: AI Bias in Data Science and Technology.The Ethical Maze to Be Navigated: AI Bias in Data Science and Technology.
The Ethical Maze to Be Navigated: AI Bias in Data Science and Technology.sakshibhattco
 
The AI Now Report The Social and Economic Implications of Artificial Intelli...
The AI Now Report  The Social and Economic Implications of Artificial Intelli...The AI Now Report  The Social and Economic Implications of Artificial Intelli...
The AI Now Report The Social and Economic Implications of Artificial Intelli...Willy Marroquin (WillyDevNET)
 
Algorithms of Online Platforms and Networks
Algorithms of Online Platforms and NetworksAlgorithms of Online Platforms and Networks
Algorithms of Online Platforms and NetworksAnsgar Koene
 
e-SIDES workshop at BDV Meet-Up, Sofia 14/05/2018
e-SIDES workshop at BDV Meet-Up, Sofia 14/05/2018e-SIDES workshop at BDV Meet-Up, Sofia 14/05/2018
e-SIDES workshop at BDV Meet-Up, Sofia 14/05/2018e-SIDES.eu
 
An expanding and expansive view of computing research
An expanding and expansive view of computing researchAn expanding and expansive view of computing research
An expanding and expansive view of computing researchNAVER Engineering
 
The Ethics of Artificial Intelligence in Digital Ecosystems
The Ethics of Artificial Intelligence in Digital EcosystemsThe Ethics of Artificial Intelligence in Digital Ecosystems
The Ethics of Artificial Intelligence in Digital Ecosystemswashikmaryam
 
Bias in algorithmic decision-making: Standards, Algorithmic Literacy and Gove...
Bias in algorithmic decision-making: Standards, Algorithmic Literacy and Gove...Bias in algorithmic decision-making: Standards, Algorithmic Literacy and Gove...
Bias in algorithmic decision-making: Standards, Algorithmic Literacy and Gove...Ansgar Koene
 
Trusted, Transparent and Fair AI using Open Source
Trusted, Transparent and Fair AI using Open SourceTrusted, Transparent and Fair AI using Open Source
Trusted, Transparent and Fair AI using Open SourceAnimesh Singh
 
Sweeny group think-ias2015
Sweeny group think-ias2015Sweeny group think-ias2015
Sweeny group think-ias2015Marianne Sweeny
 
The Connected Intelligence Centre: Human-Centered Analytics for UTS Data Chal...
The Connected Intelligence Centre: Human-Centered Analytics for UTS Data Chal...The Connected Intelligence Centre: Human-Centered Analytics for UTS Data Chal...
The Connected Intelligence Centre: Human-Centered Analytics for UTS Data Chal...Simon Buckingham Shum
 
Artificial Intelligence in Cyber Security Research Paper Writing.pptx
Artificial Intelligence in Cyber Security Research Paper Writing.pptxArtificial Intelligence in Cyber Security Research Paper Writing.pptx
Artificial Intelligence in Cyber Security Research Paper Writing.pptxkellysmith617941
 
2021_07_01 «Learning Informatics as Inspiration for Learning Analytics».
2021_07_01 «Learning Informatics as Inspiration for Learning Analytics».2021_07_01 «Learning Informatics as Inspiration for Learning Analytics».
2021_07_01 «Learning Informatics as Inspiration for Learning Analytics».eMadrid network
 
Emerging Technologies in Data Sharing and Analytics at Data61
Emerging Technologies in Data Sharing and Analytics at Data61Emerging Technologies in Data Sharing and Analytics at Data61
Emerging Technologies in Data Sharing and Analytics at Data61Liming Zhu
 

Similar a Black Box Learning Analytics? Beyond Algorithmic Transparency (20)

Algorithmic Accountability & Learning Analytics (UCL)
Algorithmic Accountability & Learning Analytics (UCL)Algorithmic Accountability & Learning Analytics (UCL)
Algorithmic Accountability & Learning Analytics (UCL)
 
Ethics in Technology Handout
Ethics in Technology HandoutEthics in Technology Handout
Ethics in Technology Handout
 
Big Data Analytics : Understanding for Research Activity
Big Data Analytics : Understanding for Research ActivityBig Data Analytics : Understanding for Research Activity
Big Data Analytics : Understanding for Research Activity
 
The Ethical Maze to Be Navigated: AI Bias in Data Science and Technology.
The Ethical Maze to Be Navigated: AI Bias in Data Science and Technology.The Ethical Maze to Be Navigated: AI Bias in Data Science and Technology.
The Ethical Maze to Be Navigated: AI Bias in Data Science and Technology.
 
The AI Now Report The Social and Economic Implications of Artificial Intelli...
The AI Now Report  The Social and Economic Implications of Artificial Intelli...The AI Now Report  The Social and Economic Implications of Artificial Intelli...
The AI Now Report The Social and Economic Implications of Artificial Intelli...
 
Data Mining the City 2019 - Week 1
Data Mining the City 2019 - Week 1Data Mining the City 2019 - Week 1
Data Mining the City 2019 - Week 1
 
Algorithms of Online Platforms and Networks
Algorithms of Online Platforms and NetworksAlgorithms of Online Platforms and Networks
Algorithms of Online Platforms and Networks
 
DATAIA & TransAlgo
DATAIA & TransAlgoDATAIA & TransAlgo
DATAIA & TransAlgo
 
e-SIDES workshop at BDV Meet-Up, Sofia 14/05/2018
e-SIDES workshop at BDV Meet-Up, Sofia 14/05/2018e-SIDES workshop at BDV Meet-Up, Sofia 14/05/2018
e-SIDES workshop at BDV Meet-Up, Sofia 14/05/2018
 
CSS-Intro-Lecture.pdf
CSS-Intro-Lecture.pdfCSS-Intro-Lecture.pdf
CSS-Intro-Lecture.pdf
 
An expanding and expansive view of computing research
An expanding and expansive view of computing researchAn expanding and expansive view of computing research
An expanding and expansive view of computing research
 
The Ethics of Artificial Intelligence in Digital Ecosystems
The Ethics of Artificial Intelligence in Digital EcosystemsThe Ethics of Artificial Intelligence in Digital Ecosystems
The Ethics of Artificial Intelligence in Digital Ecosystems
 
Dig18
Dig18Dig18
Dig18
 
Bias in algorithmic decision-making: Standards, Algorithmic Literacy and Gove...
Bias in algorithmic decision-making: Standards, Algorithmic Literacy and Gove...Bias in algorithmic decision-making: Standards, Algorithmic Literacy and Gove...
Bias in algorithmic decision-making: Standards, Algorithmic Literacy and Gove...
 
Trusted, Transparent and Fair AI using Open Source
Trusted, Transparent and Fair AI using Open SourceTrusted, Transparent and Fair AI using Open Source
Trusted, Transparent and Fair AI using Open Source
 
Sweeny group think-ias2015
Sweeny group think-ias2015Sweeny group think-ias2015
Sweeny group think-ias2015
 
The Connected Intelligence Centre: Human-Centered Analytics for UTS Data Chal...
The Connected Intelligence Centre: Human-Centered Analytics for UTS Data Chal...The Connected Intelligence Centre: Human-Centered Analytics for UTS Data Chal...
The Connected Intelligence Centre: Human-Centered Analytics for UTS Data Chal...
 
Artificial Intelligence in Cyber Security Research Paper Writing.pptx
Artificial Intelligence in Cyber Security Research Paper Writing.pptxArtificial Intelligence in Cyber Security Research Paper Writing.pptx
Artificial Intelligence in Cyber Security Research Paper Writing.pptx
 
2021_07_01 «Learning Informatics as Inspiration for Learning Analytics».
2021_07_01 «Learning Informatics as Inspiration for Learning Analytics».2021_07_01 «Learning Informatics as Inspiration for Learning Analytics».
2021_07_01 «Learning Informatics as Inspiration for Learning Analytics».
 
Emerging Technologies in Data Sharing and Analytics at Data61
Emerging Technologies in Data Sharing and Analytics at Data61Emerging Technologies in Data Sharing and Analytics at Data61
Emerging Technologies in Data Sharing and Analytics at Data61
 

Más de Simon Buckingham Shum

The Generative AI System Shock, and some thoughts on Collective Intelligence ...
The Generative AI System Shock, and some thoughts on Collective Intelligence ...The Generative AI System Shock, and some thoughts on Collective Intelligence ...
The Generative AI System Shock, and some thoughts on Collective Intelligence ...Simon Buckingham Shum
 
Could Generative AI Augment Reflection, Deliberation and Argumentation?
Could Generative AI Augment Reflection, Deliberation and Argumentation?Could Generative AI Augment Reflection, Deliberation and Argumentation?
Could Generative AI Augment Reflection, Deliberation and Argumentation?Simon Buckingham Shum
 
Conversational, generative AI as a cognitive tool for critical thinking
Conversational, generative AI as a cognitive tool for critical thinkingConversational, generative AI as a cognitive tool for critical thinking
Conversational, generative AI as a cognitive tool for critical thinkingSimon Buckingham Shum
 
On the Design of a Writing App offering 24/7 Formative Feedback on Reflective...
On the Design of a Writing App offering 24/7 Formative Feedback on Reflective...On the Design of a Writing App offering 24/7 Formative Feedback on Reflective...
On the Design of a Writing App offering 24/7 Formative Feedback on Reflective...Simon Buckingham Shum
 
Is “The Matter With Things” also what’s the matter with Learning Analytics?
Is “The Matter With Things” also what’s the matter with Learning Analytics?Is “The Matter With Things” also what’s the matter with Learning Analytics?
Is “The Matter With Things” also what’s the matter with Learning Analytics?Simon Buckingham Shum
 
Deliberative Democracy as a strategy for co-designing university ethics aro...
Deliberative Democracy as a strategy for co-designing university ethics aro...Deliberative Democracy as a strategy for co-designing university ethics aro...
Deliberative Democracy as a strategy for co-designing university ethics aro...Simon Buckingham Shum
 
Knowledge Art or… “Participatory Improvisational DVN”
Knowledge Art or… “Participatory Improvisational DVN”Knowledge Art or… “Participatory Improvisational DVN”
Knowledge Art or… “Participatory Improvisational DVN”Simon Buckingham Shum
 
March 2021 • 24/7 Instant Feedback on Writing: Integrating AcaWriter into yo...
March 2021 • 24/7 Instant Feedback on Writing: Integrating AcaWriter into yo...March 2021 • 24/7 Instant Feedback on Writing: Integrating AcaWriter into yo...
March 2021 • 24/7 Instant Feedback on Writing: Integrating AcaWriter into yo...Simon Buckingham Shum
 
ICQE20: Quantitative Ethnography Visualizations as Tools for Thinking
ICQE20: Quantitative Ethnography Visualizations as Tools for ThinkingICQE20: Quantitative Ethnography Visualizations as Tools for Thinking
ICQE20: Quantitative Ethnography Visualizations as Tools for ThinkingSimon Buckingham Shum
 
24/7 Instant Feedback on Writing: Integrating AcaWriter into your Teaching
24/7 Instant Feedback on Writing: Integrating AcaWriter into your Teaching24/7 Instant Feedback on Writing: Integrating AcaWriter into your Teaching
24/7 Instant Feedback on Writing: Integrating AcaWriter into your TeachingSimon Buckingham Shum
 
Argumentation 101 for Learning Analytics PhDs!
Argumentation 101 for Learning Analytics PhDs!Argumentation 101 for Learning Analytics PhDs!
Argumentation 101 for Learning Analytics PhDs!Simon Buckingham Shum
 
Learning Informatics: AI • Analytics • Accountability • Agency
Learning Informatics: AI • Analytics • Accountability • AgencyLearning Informatics: AI • Analytics • Accountability • Agency
Learning Informatics: AI • Analytics • Accountability • AgencySimon Buckingham Shum
 
AI/Data Analytics (AIDA): Key concepts, examples & risks
AI/Data Analytics (AIDA): Key concepts, examples & risksAI/Data Analytics (AIDA): Key concepts, examples & risks
AI/Data Analytics (AIDA): Key concepts, examples & risksSimon Buckingham Shum
 
Learning Analytics as Educational Knowledge Infrastructure
Learning Analytics as Educational Knowledge InfrastructureLearning Analytics as Educational Knowledge Infrastructure
Learning Analytics as Educational Knowledge InfrastructureSimon Buckingham Shum
 
Towards Collaboration Translucence: Giving Meaning to Multimodal Group Data
Towards Collaboration Translucence: Giving Meaning to Multimodal Group DataTowards Collaboration Translucence: Giving Meaning to Multimodal Group Data
Towards Collaboration Translucence: Giving Meaning to Multimodal Group DataSimon Buckingham Shum
 
Knowledge Art - MDSI Guest Lecture - 1st May 2019
Knowledge Art - MDSI Guest Lecture - 1st May 2019Knowledge Art - MDSI Guest Lecture - 1st May 2019
Knowledge Art - MDSI Guest Lecture - 1st May 2019Simon Buckingham Shum
 
Educational Data Scientists: A Scarce Breed
Educational Data Scientists: A Scarce BreedEducational Data Scientists: A Scarce Breed
Educational Data Scientists: A Scarce BreedSimon Buckingham Shum
 
Transitioning Education’s Knowledge Infrastructure ICLS 2018
Transitioning Education’s Knowledge Infrastructure ICLS 2018Transitioning Education’s Knowledge Infrastructure ICLS 2018
Transitioning Education’s Knowledge Infrastructure ICLS 2018Simon Buckingham Shum
 

Más de Simon Buckingham Shum (20)

The Generative AI System Shock, and some thoughts on Collective Intelligence ...
The Generative AI System Shock, and some thoughts on Collective Intelligence ...The Generative AI System Shock, and some thoughts on Collective Intelligence ...
The Generative AI System Shock, and some thoughts on Collective Intelligence ...
 
Could Generative AI Augment Reflection, Deliberation and Argumentation?
Could Generative AI Augment Reflection, Deliberation and Argumentation?Could Generative AI Augment Reflection, Deliberation and Argumentation?
Could Generative AI Augment Reflection, Deliberation and Argumentation?
 
Conversational, generative AI as a cognitive tool for critical thinking
Conversational, generative AI as a cognitive tool for critical thinkingConversational, generative AI as a cognitive tool for critical thinking
Conversational, generative AI as a cognitive tool for critical thinking
 
On the Design of a Writing App offering 24/7 Formative Feedback on Reflective...
On the Design of a Writing App offering 24/7 Formative Feedback on Reflective...On the Design of a Writing App offering 24/7 Formative Feedback on Reflective...
On the Design of a Writing App offering 24/7 Formative Feedback on Reflective...
 
SBS_ISLS2022.pdf
SBS_ISLS2022.pdfSBS_ISLS2022.pdf
SBS_ISLS2022.pdf
 
Is “The Matter With Things” also what’s the matter with Learning Analytics?
Is “The Matter With Things” also what’s the matter with Learning Analytics?Is “The Matter With Things” also what’s the matter with Learning Analytics?
Is “The Matter With Things” also what’s the matter with Learning Analytics?
 
Deliberative Democracy as a strategy for co-designing university ethics aro...
Deliberative Democracy as a strategy for co-designing university ethics aro...Deliberative Democracy as a strategy for co-designing university ethics aro...
Deliberative Democracy as a strategy for co-designing university ethics aro...
 
Knowledge Art or… “Participatory Improvisational DVN”
Knowledge Art or… “Participatory Improvisational DVN”Knowledge Art or… “Participatory Improvisational DVN”
Knowledge Art or… “Participatory Improvisational DVN”
 
March 2021 • 24/7 Instant Feedback on Writing: Integrating AcaWriter into yo...
March 2021 • 24/7 Instant Feedback on Writing: Integrating AcaWriter into yo...March 2021 • 24/7 Instant Feedback on Writing: Integrating AcaWriter into yo...
March 2021 • 24/7 Instant Feedback on Writing: Integrating AcaWriter into yo...
 
ICQE20: Quantitative Ethnography Visualizations as Tools for Thinking
ICQE20: Quantitative Ethnography Visualizations as Tools for ThinkingICQE20: Quantitative Ethnography Visualizations as Tools for Thinking
ICQE20: Quantitative Ethnography Visualizations as Tools for Thinking
 
24/7 Instant Feedback on Writing: Integrating AcaWriter into your Teaching
24/7 Instant Feedback on Writing: Integrating AcaWriter into your Teaching24/7 Instant Feedback on Writing: Integrating AcaWriter into your Teaching
24/7 Instant Feedback on Writing: Integrating AcaWriter into your Teaching
 
Argumentation 101 for Learning Analytics PhDs!
Argumentation 101 for Learning Analytics PhDs!Argumentation 101 for Learning Analytics PhDs!
Argumentation 101 for Learning Analytics PhDs!
 
Learning Informatics: AI • Analytics • Accountability • Agency
Learning Informatics: AI • Analytics • Accountability • AgencyLearning Informatics: AI • Analytics • Accountability • Agency
Learning Informatics: AI • Analytics • Accountability • Agency
 
AI/Data Analytics (AIDA): Key concepts, examples & risks
AI/Data Analytics (AIDA): Key concepts, examples & risksAI/Data Analytics (AIDA): Key concepts, examples & risks
AI/Data Analytics (AIDA): Key concepts, examples & risks
 
Learning Analytics as Educational Knowledge Infrastructure
Learning Analytics as Educational Knowledge InfrastructureLearning Analytics as Educational Knowledge Infrastructure
Learning Analytics as Educational Knowledge Infrastructure
 
Towards Collaboration Translucence: Giving Meaning to Multimodal Group Data
Towards Collaboration Translucence: Giving Meaning to Multimodal Group DataTowards Collaboration Translucence: Giving Meaning to Multimodal Group Data
Towards Collaboration Translucence: Giving Meaning to Multimodal Group Data
 
Knowledge Art - MDSI Guest Lecture - 1st May 2019
Knowledge Art - MDSI Guest Lecture - 1st May 2019Knowledge Art - MDSI Guest Lecture - 1st May 2019
Knowledge Art - MDSI Guest Lecture - 1st May 2019
 
UX/LX for PLSA: Workshop Welcome
UX/LX for PLSA: Workshop WelcomeUX/LX for PLSA: Workshop Welcome
UX/LX for PLSA: Workshop Welcome
 
Educational Data Scientists: A Scarce Breed
Educational Data Scientists: A Scarce BreedEducational Data Scientists: A Scarce Breed
Educational Data Scientists: A Scarce Breed
 
Transitioning Education’s Knowledge Infrastructure ICLS 2018
Transitioning Education’s Knowledge Infrastructure ICLS 2018Transitioning Education’s Knowledge Infrastructure ICLS 2018
Transitioning Education’s Knowledge Infrastructure ICLS 2018
 

Último

ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701bronxfugly43
 
Graduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - EnglishGraduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - Englishneillewis46
 
Towards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptxTowards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptxJisc
 
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptxHMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptxEsquimalt MFRC
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.christianmathematics
 
Making communications land - Are they received and understood as intended? we...
Making communications land - Are they received and understood as intended? we...Making communications land - Are they received and understood as intended? we...
Making communications land - Are they received and understood as intended? we...Association for Project Management
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibitjbellavia9
 
Understanding Accommodations and Modifications
Understanding  Accommodations and ModificationsUnderstanding  Accommodations and Modifications
Understanding Accommodations and ModificationsMJDuyan
 
Unit-IV; Professional Sales Representative (PSR).pptx
Unit-IV; Professional Sales Representative (PSR).pptxUnit-IV; Professional Sales Representative (PSR).pptx
Unit-IV; Professional Sales Representative (PSR).pptxVishalSingh1417
 
Dyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxDyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxcallscotland1987
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfciinovamais
 
Vishram Singh - Textbook of Anatomy Upper Limb and Thorax.. Volume 1 (1).pdf
Vishram Singh - Textbook of Anatomy  Upper Limb and Thorax.. Volume 1 (1).pdfVishram Singh - Textbook of Anatomy  Upper Limb and Thorax.. Volume 1 (1).pdf
Vishram Singh - Textbook of Anatomy Upper Limb and Thorax.. Volume 1 (1).pdfssuserdda66b
 
Single or Multiple melodic lines structure
Single or Multiple melodic lines structureSingle or Multiple melodic lines structure
Single or Multiple melodic lines structuredhanjurrannsibayan2
 
Application orientated numerical on hev.ppt
Application orientated numerical on hev.pptApplication orientated numerical on hev.ppt
Application orientated numerical on hev.pptRamjanShidvankar
 
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptxBasic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptxDenish Jangid
 
Fostering Friendships - Enhancing Social Bonds in the Classroom
Fostering Friendships - Enhancing Social Bonds  in the ClassroomFostering Friendships - Enhancing Social Bonds  in the Classroom
Fostering Friendships - Enhancing Social Bonds in the ClassroomPooky Knightsmith
 
Accessible Digital Futures project (20/03/2024)
Accessible Digital Futures project (20/03/2024)Accessible Digital Futures project (20/03/2024)
Accessible Digital Futures project (20/03/2024)Jisc
 
Python Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docxPython Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docxRamakrishna Reddy Bijjam
 

Último (20)

ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701
 
Graduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - EnglishGraduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - English
 
Towards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptxTowards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptx
 
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptxHMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
 
Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.
 
Spatium Project Simulation student brief
Spatium Project Simulation student briefSpatium Project Simulation student brief
Spatium Project Simulation student brief
 
Making communications land - Are they received and understood as intended? we...
Making communications land - Are they received and understood as intended? we...Making communications land - Are they received and understood as intended? we...
Making communications land - Are they received and understood as intended? we...
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibit
 
Understanding Accommodations and Modifications
Understanding  Accommodations and ModificationsUnderstanding  Accommodations and Modifications
Understanding Accommodations and Modifications
 
Unit-IV; Professional Sales Representative (PSR).pptx
Unit-IV; Professional Sales Representative (PSR).pptxUnit-IV; Professional Sales Representative (PSR).pptx
Unit-IV; Professional Sales Representative (PSR).pptx
 
Dyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxDyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptx
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
Vishram Singh - Textbook of Anatomy Upper Limb and Thorax.. Volume 1 (1).pdf
Vishram Singh - Textbook of Anatomy  Upper Limb and Thorax.. Volume 1 (1).pdfVishram Singh - Textbook of Anatomy  Upper Limb and Thorax.. Volume 1 (1).pdf
Vishram Singh - Textbook of Anatomy Upper Limb and Thorax.. Volume 1 (1).pdf
 
Single or Multiple melodic lines structure
Single or Multiple melodic lines structureSingle or Multiple melodic lines structure
Single or Multiple melodic lines structure
 
Application orientated numerical on hev.ppt
Application orientated numerical on hev.pptApplication orientated numerical on hev.ppt
Application orientated numerical on hev.ppt
 
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptxBasic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
 
Fostering Friendships - Enhancing Social Bonds in the Classroom
Fostering Friendships - Enhancing Social Bonds  in the ClassroomFostering Friendships - Enhancing Social Bonds  in the Classroom
Fostering Friendships - Enhancing Social Bonds in the Classroom
 
Accessible Digital Futures project (20/03/2024)
Accessible Digital Futures project (20/03/2024)Accessible Digital Futures project (20/03/2024)
Accessible Digital Futures project (20/03/2024)
 
Python Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docxPython Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docx
 

Black Box Learning Analytics? Beyond Algorithmic Transparency

  • 1. Black Box Learning Analytics? Beyond Algorithmic Transparency Simon Buckingham Shum Professor of Learning Informatics Director, UTS Connected Intelligence Centre @sbuckshum • Simon.BuckinghamShum.net utscic.edu.au Learning Analytics Summer Institute, Ann Arbor, June 2017
  • 3. 3 I was speaking at this event http://codeactsineducation.wordpress.com
  • 4. 4 I asked Siri to find the conference website… “Find code acts in education”
  • 5. 5 “Find code acts in education” I asked Siri to find the conference website…
  • 7. Societal impact of data science is now reaching mass audiences 7 https://weaponsofmathdestructionbook.com • http://datasociety.net • http://artificialinteligencenow.com • https://obamawhitehouse.archives.gov/blog/2016/05/04/big-risks-big-opportunities-intersection-big-data-and-civil-rights
  • 9. A student warning system, somewhere near you… Student: “Being told by the LMS every time I login that I’m at grave risk of failing is stressful. I already informed Student Services about my disability and recent bereavement, and I’m working with my tutor to catch up…”
  • 10. A student warning system, somewhere near you… University: “Don’t worry it’s nothing personal. It’s just the algorithm.” Student: “Being told by the LMS every time I login that I’m at grave risk of failing is stressful. I already informed Student Services about my disability and recent bereavement, and I’m working with my tutor to catch up…”
  • 11. A social network visualisation, somewhere near you… Student: “Being picked out like this as some sort of loner makes me feel uncomfortable… I chat with peers all the time in the cafes.”
  • 12. A social network visualisation, somewhere near you… Student: “Being picked out like this as some sort of loner makes me feel uncomfortable… I chat with peers all the time in the cafes.” University: “Don’t worry it’s nothing personal. It’s just the algorithm.”
  • 13. What would it mean for learning analytics to be accountable? …there’s intense societal interest right now in algorithms
  • 14. Algorithms are generating huge interest in the media, policy, social justice, and academia In an increasingly algorithmic world […] What, then, do we talk about when we talk about “governing algorithms”? http://governingalgorithms.org
  • 15. Be afraid: unaccountable algorithms are counting our money – and our other assets 15 http://www.lse.ac.uk/newsAndMedia/videoAndAudio/channels/publicLecturesAndEvents/player.aspx?id=3350
  • 17. Algorithms that make you Accountable more objectively, efficiently and rewardingly than a human can 17 Meaning 1
  • 18. 18 Making Algorithms that make you Accountable Accountable Meaning 2
  • 19. 19 We must be able to open the black box (Frank Pasquale)
  • 20. Statisticians / Data Miners Programmers Computer Scientists Social Scientists Designers Historians Lawyers Policy Makers Business Entrepreneurs 20 A topic now engaging diverse expertises…
  • 21. 21
  • 22. 22 What are Algorithms? abstract rules for transforming data which to exert influence require programming as executable code operating on data structures running on a platform in an increasingly distributed architecture Paul Dourish: The Social Lives of Algorithms. Lecture, 23 Feb. 2016, University of Melbourne. http://www.eng.unimelb.edu.au/engage/events/lectures/dourish-2016
  • 23. What makes algorithms opaque? intentional secrecy technical illiteracy complexity of infrastructure 23Burrell, J. (2016). How the machine ‘thinks’: Understanding opacity in machine learning algorithms. Big Data & Society 3(1). http://doi.org/10.1177/2053951715622512
  • 24. 24Paul Dourish: The Social Lives of Algorithms. Lecture, 23 Feb. 2016, University of Melbourne. http://www.eng.unimelb.edu.au/engage/events/lectures/dourish-2016 Algorithms are not to be found ‘in’ Pasquale’s black box ‘Algorithms’ are abstractions invented by computer scientists, mathematicians, etc. They may be impossible to reverse engineer from a live, material, distributed system. To understand them as phenomena, and perhaps to call them to account, we need to ask how they were conceived, with what intent, who sanctioned their implementation, etc… (Paul Dourish)
  • 25. #LearningAnalytics See the Society for Learning Analytics Research: http://SoLAResearch.org
  • 28. Algorithms don’t act, it’s the whole system that counts Ananny, M., 2016. Toward an Ethics of Algorithms: Convening, Observation, Probability, and Timeliness. Science, Technology & Human Values, 41(1), pp.93–117 “Algorithmic Assemblages” are more useful units of analysis Aggregation inferring associations Classification inferring boundaries Temporality inferring when to act algo code work practices cultural norms
  • 29. Stakeholders in a Learning Analytics system Ethical Principles Educational/Learning Sciences researcher Learning Theory Algorithm Learning Analytics Researcher Educator Learner Learning Outcomes Educational Insights Programmer Software, Hardware User Interface Data
  • 31. Forms of Algorithmic Accountability in Learning Analytics Human-Centred Informatics Lenses Computer Science Data Science User-Centred Design Learning Technology Human-Data Interaction Ethics of Technology Legal Accountability…?
  • 33. Accountability in terms of: Ethics of Technology Teleological critique: do the analytics lead to consequences that we value? Virtues critique: What are the values implicit/explicit in the design (at every level), and do stakeholders perceive and use the system as intended? (cf. HCI Claims Analysis) Ethics of Technology Deontological critique: do the analytics produce results that satisfy current duties/rules/policies/principles, and/or correspond with how we already classify the world? Ananny, M., 2016. Toward an Ethics of Algorithms: Convening, Observation, Probability, and Timeliness. Science, Technology & Human Values, 41(1), pp.93–117 …but for an emerging field, esp. with personalisation, D & T can be challenging to apply
  • 35. Accountability in terms of: Computer Science Computer Science Source code availability: to what extent can developers inspect and test the source code? Algorithmic Integrity: does the running code (code+data+platform) operationalise the algorithm with integrity? Is it possible to reverse engineer the algorithm from the system? Source code maintainability: how easily can a developer modify the source code? System output intelligibility: can we understand why the implemented system generates its outputs under different conditions? (a particular issue with machine learning)
  • 37. Accountability in terms of: Data Science Data Science Model Integrity: for machine learning, do the target variables and class labels embody discriminatory bias? Training Data Integrity: for machine learning, does the training set embody discriminatory bias? Feature Selection Integrity: does the discriminatory power of features do justice to the complexity of the phenomenon? Proxy Integrity: do apparent proxy features for a target quality embody discriminatory bias? Barocas, S. and A. Selbst (In Press). Big Data's Disparate Impact. California Law Review 104. Preprint: http://papers.ssrn.com/sol3/papers.cfm?abstract_id=2477899
  • 38. Algorithmic shortlisting for interview http://www.nytimes.com/2015/06/26/upshot/can-an-algorithm-hire-better-than-a-human.html?_r=0
  • 39. (fictional scenario) Ascilite 2011 Keynote: Slide 77: http://people.kmi.open.ac.uk/sbs/2011/12/learning-analytics-ascilite2011-keynote Obviously no university would vet student applications by algorithm… K
  • 40. Stella Lowry & Gordon Macpherson, A Blot on the Profession, 296 BRITISH MEDICAL J. 657 (1988). http://www.theguardian.com/news/datablog/2013/aug/14/problem-with-algorithms-magnifying-misbehaviour Obviously no university would vet student applications by algorithm… L
  • 41. Returning to algorithmic staff recruitment… 41 “It is dangerously naïve, however, to believe that big data will automatically eliminate human bias from the decision- making process. …inherit the prejudices of prior decision- makers …reflect the widespread biases that persist in society …Discover …regularities that are really just preexisting patterns of exclusion and inequality.” Written Testimony of Solon Barocas: U.S. Equal Employment Opportunity Commission, Meeting of July 1, 2015 - EEOC at 50: Progress and Continuing Challenges in Eradicating Employment Discrimination. http://www1.eeoc.gov//eeoc/meetings/7-1-15/barocas.cfm?renderforprint=1
  • 42. Returning to algorithmic staff recruitment… 42 “…Adopted or applied without care, data mining can deny historically disadvantaged and vulnerable groups full participation in society.” “…it can be unusually hard to identify the source of the problem, to explain it to a court, or to remedy it technically or through legal action.” Written Testimony of Solon Barocas: U.S. Equal Employment Opportunity Commission, Meeting of July 1, 2015 - EEOC at 50: Progress and Continuing Challenges in Eradicating Employment Discrimination. http://www1.eeoc.gov//eeoc/meetings/7-1-15/barocas.cfm?renderforprint=1
  • 44. Accountability in terms of: Human-Data Interaction Human-Data Interaction “Accountable Data Transactions”: does the data infrastructure have clear protocols for personal data requests, permission, and audit? Crabtree, A. and R. Mortier (2015). Human Data Interaction: Historical Lessons from Social Studies and CSCW. Proc. European Conference on Computer Supported Cooperative Work, Oslo (19-23 Sept 2015), Springer: London. Preprint: http://mor1.github.io/publications/pdf/ecscw15-hdi.pdf Social Data Infrastructure: as interactions around data are formalised and automated, can this infrastructure be held to account? Collective Data Ownership: is collectively owned data handled in ways that preserve individual rights? User Agency: to what degree do citizens have control over who accesses their data, and can they comprehend what analysis will be done, and by whom?
  • 46. Accountability in terms of: User-Centred Design Intelligibility: what, if any, explanation can a user ask the analytic system to provide about its behaviour, can they understand the answers, and can they give feedback? Participatory Design: to what extent are stakeholders (e.g. academics; instructors; students) involved in the system design process, and are there interfaces for them to modify the deployed system’s behaviour? User-Centred Design User Sensemaking: who are the target end-users, do they understand the analytic output, and can they take appropriate action based on it?
  • 48. Accountability in terms of: Learning Sciences & Educational Technology Improved Learning: in what ways do learners benefit from using the system? Improved Teaching: in what ways do educators benefit from using the system? Learning Sciences & Educational Technology Conceptual Integrity: does the algorithm implement the intended constructs (theory/model/rubric…) with integrity? Conceptual Integrity: is the data congruent with other sources of educational evidence?
  • 49. worked example 1 analytics for professional, academic, reflective writing Buckingham Shum, S., Á. Sándor, R. Goldsmith, X. Wang, R. Bass and M. McWilliams (2016). Reflecting on Reflective Writing Analytics: Assessment Challenges and Iterative Evaluation of a Prototype Tool. 6th International Learning Analytics & Knowledge Conference (LAK16), Edinburgh, UK, April 25 - 29 2016, ACM, New York, NY. http://dx.doi.org/10.1145/2883851.2883955
  • 50. Automated formative feedback on writing (Civil Law)
  • 51. Automated formative feedback on writing (Civil Law)
  • 52. COMPARISON OF HUMAN VS. MACHINE 52 human highlighting automated highlighting
  • 53. Example accountability analysis: writing feedback 53 Ethics: Does the system output results that match human analysts? Does instant feedback lead to novel benefits, or is it in fact damaging to students? What is the motivation behind the focus on reflection (e.g. rather than factual accuracy)? Computer Science: Does the NLP platform implement the linguistic features with integrity? Data Science: Do the linguistic features have sufficient discriminatory power? Do they ignore important qualities of value? Do they bias against certain kinds of student? Human-Data Interaction: Do students consent to their writing being analysed? User-Centred Design: Were students and educators involved in the design of the system? Can they make sense of the user interface and act on output? Learning Technology: What is the educational basis for the parser rules? Does the algorithm implement the theory/rubric with integrity? Educator/student reaction? Legal: Could a student sue the university for parser errors, or discrimination?
  • 54. worked example 2 building and visualizing a student social network Kitto, K. et al. (2016). The Connected Learning Analytics Toolkit. 6th International Learning Analytics & Knowledge Conference (LAK16), Edinburgh, UK, April 25 - 29 2016, ACM, New York, NY. http://beyondlms.org
  • 55. Social Network Visualisation of student activity 55Connected Learning Analytics Toolkit: http://beyondlms.org
  • 56. Example accountability analysis: SNA visualisation 56 Ethics: Do users validate the social networks? Does the system lead to novel benefits? What is the motivation behind the design of the system? Computer Science: Does the social network tool implement SNA metrics correctly? Data Science: Is the dataset biased or incomplete in important respects? Does the social network visualization bias against certain kinds of student? Human-Data Interaction: Should students be permitted to control their degree of visibility on different platforms? Does disclosing peer data to a student violate peers’ rights? User-Centred Design: Were students and educators involved in the design of the system? Can they make sense of the user interface and act on output? Learning Technology: What is the educational rationale for making social ties visible? Do the selected user actions implement this with integrity? Do students find it helpful? Legal: Could a student sue for discrimination due to the network map?
  • 57. approaches to designing for Learning Analytic System Integrity
  • 58. Participatory design methods that build trust Carlos G. Prieto-Alvarez, Roberto Martinez-Maldonado, Theresa Anderson (In Press). Co-designing in Learning Analytics: Tools and Techniques. In: Jason Lodge, Jared Cooney Horvath & Linda Corrin (Eds.), From data and analytics to the classroom: Translating learning analytics for teachers.
  • 59. Communicating the algorithm to educators and students? Milligan, S. and Oliveira, E. (2017). Design features that make assessment analytics trustworthy: a case study. DesignLAK17 Workshop, LAK17, Vancouver, March 2017. https://sites.google.com/site/designlak17
  • 60. 60 Milligan, S. and Griffin, P. (2016). Understanding learning and learning design in MOOCs: A measurement-based interpretation. Journal of Learning Analytics, 3(2), 88– 115. http://dx.doi.org/10.18608/jla.2016.32.5 “Capability to learn in scaled environments” Make the mapping from clicks to constructs explicit
  • 61. ETHICAL DESIGN CRITIQUE (EDC) PROCESS Prototype Analytics Tool received EDC Review Document prepared EDC Workshop records issues Core Team reviews & responds EDC Workshop participants approve CIO, DVC(ES) & (CS) Signoff Analytics Tool deployed CIC team Pro-VC Education Equity & Diversity Unit Planning & Quality Unit IT Division Director, Risk Director, Teaching Innovation Data Privacy Officer Indigenous Students Centre
  • 62. EDC: ETHICAL DESIGN CRITIQUE 62
  • 63. EDC: ETHICAL DESIGN CRITIQUE The EDC Template <insert screenshot of dashboard element> EDC team is invited to comment on: Strengths • e.g. Data is at an appropriate level that it does not disclose inappropriate information about a cohort or individuals 63
  • 64. EDC: ETHICAL DESIGN CRITIQUE Indicate concerns e.g. • Data is displayed from incomplete sources, or has been filtered in ways, that users might not expect (Specify why this violates expectations) • Data is shown for which there is no apparent reasonable use (Recommend removal) • There is scope for misinterpretation due to poor design (Suggest improvement) • This data is useful but could be inappropriately used (Caution and specify examples of inappropriate usage) 64
  • 65. Conclusion: a new career in the Learning Analytics profession? “Certified LASI Engineer” Trained to audit Learning Analytics System Integrity at multiple levels, via multiple lenses -> New principles to guide design, vendor selection, academic peer review (and maybe legal deliberation)