SlideShare una empresa de Scribd logo
1 de 35
Using Contextual Information
to Understand
Searching and Browsing Behavior
Julia Kiseleva
Eindhoven University of Technology
Eindhoven, The Netherlands, June 2016
Using Contextual Information
to Understand
Searching and Browsing Behavior
Searching Behavior
Want to go to
CIKM conference
QUERY SERP
Browsing Behavior
User Preferences
Using Contextual Information
to Understand
Searching and Browsing Behavior
Contextual Information
Explicit Context Implicit Context
Contextual Information
Explicit Context Implicit Context
Contextual Information
Explicit Context Implicit Context
Contextual Situations
(Android Tablet, Weekend)
Photo credit: Delwin Steven Campbell
via Visualhunt.com / CC BY
Using Contextual Information
to Understand
Searching and Browsing Behavior
Our Main Research Goal
How to
use
contextual information
in order to
understand
users’ searching and
browsing
behavior on the web?
Improve Online
User Experience
Applied Studies
Browsing Behavior
Destination Finder
Chapter 3 ‘Contextual Profiles’.
L. Bernardi et al. The continuous cold start problem in e-commerce recommender systems. CBRecSys. 2015
J. Kiseleva et al. Where to go on your next trip? optimizing travel destinations based on user preferences. SIGIR. 2015
Destination Finder
Chapter 3 ‘Contextual Profiles’.
L. Bernardi et al. The continuous cold start problem in e-commerce recommender systems. CBRecSys. 2015
J. Kiseleva et al. Where to go on your next trip? optimizing travel destinations based on user preferences. SIGIR. 2015
Destination Finder
Chapter 3 ‘Contextual Profiles’.
L. Bernardi et al. The continuous cold start problem in e-commerce recommender systems. CBRecSys. 2015
J. Kiseleva et al. Where to go on your next trip? optimizing travel destinations based on user preferences. SIGIR. 2015
Destination Finder
Optimized Ranking of Destinations
Using Contextual Situations
Increased User Engagement
(Click Trough Rate +3.7%)
Chapter 3 ‘Contextual Profiles’.
L. Bernardi et al. The continuous cold start problem in e-commerce recommender systems. CBRecSys. 2015
J. Kiseleva et al. Where to go on your next trip? optimizing travel destinations based on user preferences. SIGIR. 2015
Applied Studies
Browsing Behavior
Applied Studies
Browsing Behavior Searching Behavior
&
Changes in User Satisfaction
Want to go to
CIKM conference
QUERY SERP
Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’
J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014
J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015
Changes in User Satisfaction
QUERY SERP
,
Dynamic over Time
Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’
J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014
J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015
Changes in User Satisfaction
Time
Satisfaction
Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’
J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014
J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015
QUERY
, SERP
Changes in User Satisfaction
Time
#Reformulations
~
Satisfaction
Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’
J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014
J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015
2013
Oct NovSepAugJul
QUERY
, SERP
Changes in User Satisfaction
Before November 2013 After November 2013
Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’
J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014
J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015
QUERY= ‘flawless’
Changes in User Satisfaction
Before November 2013 After November 2013
Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’
J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014
J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015
QUERY= ‘flawless’
Applied Studies
Browsing Behavior Searching Behavior
&
Cortana:
“What can
I help you
do now?”
Q1: how is the weather in Chicago
Q2: how is it this weekend
Q3: find me hotels
Q4: which one of these is the cheapest
Q5: which one of these has at least 4 stars
Q6: find me directions from the Chicago airport to
number one
User’s dialogue
with Cortana:
Task is “Finding
a hotel in
Chicago”
Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’
J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016
J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
Q1: find me a pharmacy nearby
Q2: which of these is highly rated
Q3: show more information about number 2
Q4: how long will it take me to get there
Q5: Thanks
User’s dialogue
with Cortana:
Task is “Finding
a pharmacy”
Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’
J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016
J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
Cortana:
“Here are ten
restaurants
near you”
Cortana:
“Here are ten
restaurants near
you that have
good reviews”
Cortana:
“Getting you
direction to the
Mayuri Indian
Cuisine”
User:
“show
restauran
ts near
me”
User:
“show the
best ones”
User:
“show
directions
to the
second
one”
Cortana:
“Here are ten
restaurants
near you”
Cortana:
“Here are ten
restaurants near
you that have
good reviews”
Cortana:
“Getting you
direction to the
Mayuri Indian
Cuisine”
User:
“show
restauran
ts near
me”
User:
“show the
best ones”
User:
“show
directions
to the
second
one”
No Clicks
???
Cortana:
“Here are ten
restaurants
near you”
Cortana:
“Here are ten
restaurants near
you that have
good reviews”
Cortana:
“Getting you
direction to the
Mayuri Indian
Cuisine”
User:
“show
restauran
ts near
me”
User:
“show the
best ones”
User:
“show
directions
to the
second
one”
SAT? SAT?
SAT
?
Overall
SAT?
? SAT? SAT?
SAT
?
Acoustic Similarity
Phonetic Similarity
Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’
J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016
J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
Tracking User Interaction
Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’
J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016
J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
3 seconds 6 seconds
33% of
ViewPort
66% of
ViewPort
ViewPortHeight
2 seconds
20% of
ViewPort
1s 4s 0.4s 5.4s+ + =
Tracking User Interaction
Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’
J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016
J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
Quality of Interaction Model
Method Accuracy (%) Average F1 (%)
Baseline 70.62 61.38
Interaction Model 80.81*
(14.43)
79.08*
(28.83)
* Statistically significant improvement (p < 0,05 )
Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’
J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016
J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
• Contextual information should be taken into account
to understand web and mobile users’ behavior
• Analyzing behavioral signals over time is needed to
detect changes in user satisfaction with web search
• Touch signals are crucial for inferring user
satisfaction with intelligent assistants on mobile
devices
Conclusion
Using Contextual Information to Understand Searching and Browsing Behavior

Más contenido relacionado

Destacado

Unifying Nearest Neighbors Collaborative Filtering
Unifying Nearest Neighbors Collaborative FilteringUnifying Nearest Neighbors Collaborative Filtering
Unifying Nearest Neighbors Collaborative Filteringkoeverstrep
 
[CIKM 2014] Deviation-Based Contextual SLIM Recommenders
[CIKM 2014] Deviation-Based Contextual SLIM Recommenders[CIKM 2014] Deviation-Based Contextual SLIM Recommenders
[CIKM 2014] Deviation-Based Contextual SLIM RecommendersYONG ZHENG
 
An evaluation of SimRank and Personalized PageRank to build a recommender sys...
An evaluation of SimRank and Personalized PageRank to build a recommender sys...An evaluation of SimRank and Personalized PageRank to build a recommender sys...
An evaluation of SimRank and Personalized PageRank to build a recommender sys...Paolo Tomeo
 
Catalog University Pub talk: Leveraging browsing behavior to improve catalog ...
Catalog University Pub talk: Leveraging browsing behavior to improve catalog ...Catalog University Pub talk: Leveraging browsing behavior to improve catalog ...
Catalog University Pub talk: Leveraging browsing behavior to improve catalog ...Sarah Fletcher
 
Data management platform tra CRM e advertising
Data management platform tra CRM e advertisingData management platform tra CRM e advertising
Data management platform tra CRM e advertisingSmarter Engagement
 
S365 M Commerce Africa Overview June 09 Linkedin.Ppt [Compatibility Mode]
S365 M Commerce Africa Overview June 09 Linkedin.Ppt [Compatibility Mode]S365 M Commerce Africa Overview June 09 Linkedin.Ppt [Compatibility Mode]
S365 M Commerce Africa Overview June 09 Linkedin.Ppt [Compatibility Mode]pigherder
 
Types Of Online Advertising
Types Of Online AdvertisingTypes Of Online Advertising
Types Of Online Advertisingjodiejosey
 
An Introduction to Online Advertising
An Introduction to Online AdvertisingAn Introduction to Online Advertising
An Introduction to Online Advertisingsuhasmallya
 
We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)
We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)
We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)We Are Social Singapore
 
Social, Digital & Mobile Around The World (January 2014)
Social, Digital & Mobile Around The World (January 2014)Social, Digital & Mobile Around The World (January 2014)
Social, Digital & Mobile Around The World (January 2014)We Are Social Singapore
 

Destacado (17)

Unifying Nearest Neighbors Collaborative Filtering
Unifying Nearest Neighbors Collaborative FilteringUnifying Nearest Neighbors Collaborative Filtering
Unifying Nearest Neighbors Collaborative Filtering
 
[CIKM 2014] Deviation-Based Contextual SLIM Recommenders
[CIKM 2014] Deviation-Based Contextual SLIM Recommenders[CIKM 2014] Deviation-Based Contextual SLIM Recommenders
[CIKM 2014] Deviation-Based Contextual SLIM Recommenders
 
An evaluation of SimRank and Personalized PageRank to build a recommender sys...
An evaluation of SimRank and Personalized PageRank to build a recommender sys...An evaluation of SimRank and Personalized PageRank to build a recommender sys...
An evaluation of SimRank and Personalized PageRank to build a recommender sys...
 
Catalog University Pub talk: Leveraging browsing behavior to improve catalog ...
Catalog University Pub talk: Leveraging browsing behavior to improve catalog ...Catalog University Pub talk: Leveraging browsing behavior to improve catalog ...
Catalog University Pub talk: Leveraging browsing behavior to improve catalog ...
 
mCommerce
mCommercemCommerce
mCommerce
 
Data management platform tra CRM e advertising
Data management platform tra CRM e advertisingData management platform tra CRM e advertising
Data management platform tra CRM e advertising
 
Session#4; mobile commerce
Session#4; mobile commerceSession#4; mobile commerce
Session#4; mobile commerce
 
S365 M Commerce Africa Overview June 09 Linkedin.Ppt [Compatibility Mode]
S365 M Commerce Africa Overview June 09 Linkedin.Ppt [Compatibility Mode]S365 M Commerce Africa Overview June 09 Linkedin.Ppt [Compatibility Mode]
S365 M Commerce Africa Overview June 09 Linkedin.Ppt [Compatibility Mode]
 
E branding and Online advertising
E branding and Online advertisingE branding and Online advertising
E branding and Online advertising
 
Online Advertising
Online AdvertisingOnline Advertising
Online Advertising
 
Types Of Online Advertising
Types Of Online AdvertisingTypes Of Online Advertising
Types Of Online Advertising
 
An Introduction to Online Advertising
An Introduction to Online AdvertisingAn Introduction to Online Advertising
An Introduction to Online Advertising
 
We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)
We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)
We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)
 
Social, Digital & Mobile Around The World (January 2014)
Social, Digital & Mobile Around The World (January 2014)Social, Digital & Mobile Around The World (January 2014)
Social, Digital & Mobile Around The World (January 2014)
 
Digital, Social & Mobile in 2015
Digital, Social & Mobile in 2015Digital, Social & Mobile in 2015
Digital, Social & Mobile in 2015
 
Digital in 2017 Global Overview
Digital in 2017 Global OverviewDigital in 2017 Global Overview
Digital in 2017 Global Overview
 
Digital in 2016
Digital in 2016Digital in 2016
Digital in 2016
 

Similar a Using Contextual Information to Understand Searching and Browsing Behavior

#BrightonSEO: Guerilla User Testing for Search - Stephen Kenwright
#BrightonSEO: Guerilla User Testing for Search - Stephen Kenwright#BrightonSEO: Guerilla User Testing for Search - Stephen Kenwright
#BrightonSEO: Guerilla User Testing for Search - Stephen KenwrightBranded3
 
UX playbook: Real world user exercises
UX playbook: Real world user exercisesUX playbook: Real world user exercises
UX playbook: Real world user exercisesInVision App
 
Cowen 2015 Tech Conference (05-15)
Cowen 2015 Tech Conference (05-15) Cowen 2015 Tech Conference (05-15)
Cowen 2015 Tech Conference (05-15) Brent Chudoba
 
Store Front Optimization | David Henry, Monster.com | iStrategy, London
Store Front Optimization | David Henry, Monster.com | iStrategy, LondonStore Front Optimization | David Henry, Monster.com | iStrategy, London
Store Front Optimization | David Henry, Monster.com | iStrategy, LondoniStrategy
 
Measuring the Quality of Online Service - Jinyoung kim
Measuring the Quality of Online Service - Jinyoung kimMeasuring the Quality of Online Service - Jinyoung kim
Measuring the Quality of Online Service - Jinyoung kimJin Young Kim
 
An Eye Towards User Engagement, EyeTrackUX West
An Eye Towards User Engagement, EyeTrackUX WestAn Eye Towards User Engagement, EyeTrackUX West
An Eye Towards User Engagement, EyeTrackUX WestAndrew Schall
 
Information Scent, Searching and Stopping
Information Scent, Searching and StoppingInformation Scent, Searching and Stopping
Information Scent, Searching and StoppingDavidMaxwell77
 
UI / UX Engineering for Web Applications
UI / UX Engineering for Web ApplicationsUI / UX Engineering for Web Applications
UI / UX Engineering for Web ApplicationsReggie Niccolo Santos
 
KLI Webinar: Eye Tracking The Mobile User Experience
KLI Webinar: Eye Tracking The Mobile User Experience KLI Webinar: Eye Tracking The Mobile User Experience
KLI Webinar: Eye Tracking The Mobile User Experience keylimeinteractive
 
Wanderwell engr 245 lean launch pad stanford 2019
Wanderwell engr 245 lean launch pad stanford 2019Wanderwell engr 245 lean launch pad stanford 2019
Wanderwell engr 245 lean launch pad stanford 2019Stanford University
 
Engagement, Metrics & Personalisation at Scale
Engagement, Metrics &  Personalisation at ScaleEngagement, Metrics &  Personalisation at Scale
Engagement, Metrics & Personalisation at ScaleMounia Lalmas-Roelleke
 
A Quick Guide To Understand Indonesian E-Commerce Consumer
A Quick Guide To Understand Indonesian E-Commerce ConsumerA Quick Guide To Understand Indonesian E-Commerce Consumer
A Quick Guide To Understand Indonesian E-Commerce ConsumerPetra Dharma Anderson
 
Corso Interazione Uomo Macchina e Sviluppo Applicazioni Mobile - GoBus
Corso Interazione Uomo Macchina e Sviluppo Applicazioni Mobile - GoBusCorso Interazione Uomo Macchina e Sviluppo Applicazioni Mobile - GoBus
Corso Interazione Uomo Macchina e Sviluppo Applicazioni Mobile - GoBusAlessandro Longo
 
MGT5419 User Experience Design.docx
MGT5419 User Experience Design.docxMGT5419 User Experience Design.docx
MGT5419 User Experience Design.docxstirlingvwriters
 
What is IA/UX
What is IA/UXWhat is IA/UX
What is IA/UXPaul Kahn
 
Introduction to Microsoft Search #SRC101 #365EduCon 20211214
Introduction to Microsoft Search #SRC101 #365EduCon 20211214Introduction to Microsoft Search #SRC101 #365EduCon 20211214
Introduction to Microsoft Search #SRC101 #365EduCon 20211214Kanwal Khipple
 
CAPTURING USER BROWSING BEHAVIOUR INDICATORS
CAPTURING USER BROWSING BEHAVIOUR INDICATORSCAPTURING USER BROWSING BEHAVIOUR INDICATORS
CAPTURING USER BROWSING BEHAVIOUR INDICATORSecij
 
Optimizing Mobile UX Design Webinar Presentation Slides
Optimizing Mobile UX Design Webinar Presentation SlidesOptimizing Mobile UX Design Webinar Presentation Slides
Optimizing Mobile UX Design Webinar Presentation SlidesUserZoom
 
SRC101 Introduction to Search #365EDUCon
SRC101 Introduction to Search #365EDUConSRC101 Introduction to Search #365EDUCon
SRC101 Introduction to Search #365EDUConKanwal Khipple
 

Similar a Using Contextual Information to Understand Searching and Browsing Behavior (20)

#BrightonSEO: Guerilla User Testing for Search - Stephen Kenwright
#BrightonSEO: Guerilla User Testing for Search - Stephen Kenwright#BrightonSEO: Guerilla User Testing for Search - Stephen Kenwright
#BrightonSEO: Guerilla User Testing for Search - Stephen Kenwright
 
UX playbook: Real world user exercises
UX playbook: Real world user exercisesUX playbook: Real world user exercises
UX playbook: Real world user exercises
 
Cowen 2015 Tech Conference (05-15)
Cowen 2015 Tech Conference (05-15) Cowen 2015 Tech Conference (05-15)
Cowen 2015 Tech Conference (05-15)
 
The Odd Couple of UX Design
The Odd Couple of UX DesignThe Odd Couple of UX Design
The Odd Couple of UX Design
 
Store Front Optimization | David Henry, Monster.com | iStrategy, London
Store Front Optimization | David Henry, Monster.com | iStrategy, LondonStore Front Optimization | David Henry, Monster.com | iStrategy, London
Store Front Optimization | David Henry, Monster.com | iStrategy, London
 
Measuring the Quality of Online Service - Jinyoung kim
Measuring the Quality of Online Service - Jinyoung kimMeasuring the Quality of Online Service - Jinyoung kim
Measuring the Quality of Online Service - Jinyoung kim
 
An Eye Towards User Engagement, EyeTrackUX West
An Eye Towards User Engagement, EyeTrackUX WestAn Eye Towards User Engagement, EyeTrackUX West
An Eye Towards User Engagement, EyeTrackUX West
 
Information Scent, Searching and Stopping
Information Scent, Searching and StoppingInformation Scent, Searching and Stopping
Information Scent, Searching and Stopping
 
UI / UX Engineering for Web Applications
UI / UX Engineering for Web ApplicationsUI / UX Engineering for Web Applications
UI / UX Engineering for Web Applications
 
KLI Webinar: Eye Tracking The Mobile User Experience
KLI Webinar: Eye Tracking The Mobile User Experience KLI Webinar: Eye Tracking The Mobile User Experience
KLI Webinar: Eye Tracking The Mobile User Experience
 
Wanderwell engr 245 lean launch pad stanford 2019
Wanderwell engr 245 lean launch pad stanford 2019Wanderwell engr 245 lean launch pad stanford 2019
Wanderwell engr 245 lean launch pad stanford 2019
 
Engagement, Metrics & Personalisation at Scale
Engagement, Metrics &  Personalisation at ScaleEngagement, Metrics &  Personalisation at Scale
Engagement, Metrics & Personalisation at Scale
 
A Quick Guide To Understand Indonesian E-Commerce Consumer
A Quick Guide To Understand Indonesian E-Commerce ConsumerA Quick Guide To Understand Indonesian E-Commerce Consumer
A Quick Guide To Understand Indonesian E-Commerce Consumer
 
Corso Interazione Uomo Macchina e Sviluppo Applicazioni Mobile - GoBus
Corso Interazione Uomo Macchina e Sviluppo Applicazioni Mobile - GoBusCorso Interazione Uomo Macchina e Sviluppo Applicazioni Mobile - GoBus
Corso Interazione Uomo Macchina e Sviluppo Applicazioni Mobile - GoBus
 
MGT5419 User Experience Design.docx
MGT5419 User Experience Design.docxMGT5419 User Experience Design.docx
MGT5419 User Experience Design.docx
 
What is IA/UX
What is IA/UXWhat is IA/UX
What is IA/UX
 
Introduction to Microsoft Search #SRC101 #365EduCon 20211214
Introduction to Microsoft Search #SRC101 #365EduCon 20211214Introduction to Microsoft Search #SRC101 #365EduCon 20211214
Introduction to Microsoft Search #SRC101 #365EduCon 20211214
 
CAPTURING USER BROWSING BEHAVIOUR INDICATORS
CAPTURING USER BROWSING BEHAVIOUR INDICATORSCAPTURING USER BROWSING BEHAVIOUR INDICATORS
CAPTURING USER BROWSING BEHAVIOUR INDICATORS
 
Optimizing Mobile UX Design Webinar Presentation Slides
Optimizing Mobile UX Design Webinar Presentation SlidesOptimizing Mobile UX Design Webinar Presentation Slides
Optimizing Mobile UX Design Webinar Presentation Slides
 
SRC101 Introduction to Search #365EDUCon
SRC101 Introduction to Search #365EDUConSRC101 Introduction to Search #365EDUCon
SRC101 Introduction to Search #365EDUCon
 

Más de Julia Kiseleva

Understanding and Predicting User Satisfaction with Intelligent Assistants
Understanding and Predicting User Satisfaction with Intelligent AssistantsUnderstanding and Predicting User Satisfaction with Intelligent Assistants
Understanding and Predicting User Satisfaction with Intelligent AssistantsJulia Kiseleva
 
Understanding User Satisfaction with Intelligent Assistants
Understanding User Satisfaction with Intelligent AssistantsUnderstanding User Satisfaction with Intelligent Assistants
Understanding User Satisfaction with Intelligent AssistantsJulia Kiseleva
 
Behavioral Dynamics from the SERP’s Perspective: What are Failed SERPs and Ho...
Behavioral Dynamics from the SERP’s Perspective: What are Failed SERPs and Ho...Behavioral Dynamics from the SERP’s Perspective: What are Failed SERPs and Ho...
Behavioral Dynamics from the SERP’s Perspective: What are Failed SERPs and Ho...Julia Kiseleva
 
Where to Go on Your Next Trip? Optimizing Travel Destinations Based on User P...
Where to Go on Your Next Trip? Optimizing Travel Destinations Based on User P...Where to Go on Your Next Trip? Optimizing Travel Destinations Based on User P...
Where to Go on Your Next Trip? Optimizing Travel Destinations Based on User P...Julia Kiseleva
 
Modelling and Detecting Changes in User Satisfaction
Modelling and Detecting Changes in User SatisfactionModelling and Detecting Changes in User Satisfaction
Modelling and Detecting Changes in User SatisfactionJulia Kiseleva
 
Predicting Current User Intent with Contextual Markov Models
Predicting Current User Intent with Contextual Markov ModelsPredicting Current User Intent with Contextual Markov Models
Predicting Current User Intent with Contextual Markov ModelsJulia Kiseleva
 
The talk at Twente University on 28 July 2014
The talk at Twente University on 28 July 2014 The talk at Twente University on 28 July 2014
The talk at Twente University on 28 July 2014 Julia Kiseleva
 
Discovering Temporal Hidden Contexts in Web Sessions for User Trail Prediction
Discovering Temporal Hidden Contexts in Web Sessions for User Trail PredictionDiscovering Temporal Hidden Contexts in Web Sessions for User Trail Prediction
Discovering Temporal Hidden Contexts in Web Sessions for User Trail PredictionJulia Kiseleva
 
Context Mining and Integration in Web Predictive Analytics
Context Mining and Integration in Web Predictive AnalyticsContext Mining and Integration in Web Predictive Analytics
Context Mining and Integration in Web Predictive AnalyticsJulia Kiseleva
 

Más de Julia Kiseleva (9)

Understanding and Predicting User Satisfaction with Intelligent Assistants
Understanding and Predicting User Satisfaction with Intelligent AssistantsUnderstanding and Predicting User Satisfaction with Intelligent Assistants
Understanding and Predicting User Satisfaction with Intelligent Assistants
 
Understanding User Satisfaction with Intelligent Assistants
Understanding User Satisfaction with Intelligent AssistantsUnderstanding User Satisfaction with Intelligent Assistants
Understanding User Satisfaction with Intelligent Assistants
 
Behavioral Dynamics from the SERP’s Perspective: What are Failed SERPs and Ho...
Behavioral Dynamics from the SERP’s Perspective: What are Failed SERPs and Ho...Behavioral Dynamics from the SERP’s Perspective: What are Failed SERPs and Ho...
Behavioral Dynamics from the SERP’s Perspective: What are Failed SERPs and Ho...
 
Where to Go on Your Next Trip? Optimizing Travel Destinations Based on User P...
Where to Go on Your Next Trip? Optimizing Travel Destinations Based on User P...Where to Go on Your Next Trip? Optimizing Travel Destinations Based on User P...
Where to Go on Your Next Trip? Optimizing Travel Destinations Based on User P...
 
Modelling and Detecting Changes in User Satisfaction
Modelling and Detecting Changes in User SatisfactionModelling and Detecting Changes in User Satisfaction
Modelling and Detecting Changes in User Satisfaction
 
Predicting Current User Intent with Contextual Markov Models
Predicting Current User Intent with Contextual Markov ModelsPredicting Current User Intent with Contextual Markov Models
Predicting Current User Intent with Contextual Markov Models
 
The talk at Twente University on 28 July 2014
The talk at Twente University on 28 July 2014 The talk at Twente University on 28 July 2014
The talk at Twente University on 28 July 2014
 
Discovering Temporal Hidden Contexts in Web Sessions for User Trail Prediction
Discovering Temporal Hidden Contexts in Web Sessions for User Trail PredictionDiscovering Temporal Hidden Contexts in Web Sessions for User Trail Prediction
Discovering Temporal Hidden Contexts in Web Sessions for User Trail Prediction
 
Context Mining and Integration in Web Predictive Analytics
Context Mining and Integration in Web Predictive AnalyticsContext Mining and Integration in Web Predictive Analytics
Context Mining and Integration in Web Predictive Analytics
 

Último

Call Girls In Ashram Chowk Delhi 💯Call Us 🔝8264348440🔝
Call Girls In Ashram Chowk Delhi 💯Call Us 🔝8264348440🔝Call Girls In Ashram Chowk Delhi 💯Call Us 🔝8264348440🔝
Call Girls In Ashram Chowk Delhi 💯Call Us 🔝8264348440🔝soniya singh
 
All Time Service Available Call Girls Mg Road 👌 ⏭️ 6378878445
All Time Service Available Call Girls Mg Road 👌 ⏭️ 6378878445All Time Service Available Call Girls Mg Road 👌 ⏭️ 6378878445
All Time Service Available Call Girls Mg Road 👌 ⏭️ 6378878445ruhi
 
Call Now ☎ 8264348440 !! Call Girls in Sarai Rohilla Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Sarai Rohilla Escort Service Delhi N.C.R.Call Now ☎ 8264348440 !! Call Girls in Sarai Rohilla Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Sarai Rohilla Escort Service Delhi N.C.R.soniya singh
 
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge GraphsEleniIlkou
 
WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)
WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)
WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)Delhi Call girls
 
Real Men Wear Diapers T Shirts sweatshirt
Real Men Wear Diapers T Shirts sweatshirtReal Men Wear Diapers T Shirts sweatshirt
Real Men Wear Diapers T Shirts sweatshirtrahman018755
 
Moving Beyond Twitter/X and Facebook - Social Media for local news providers
Moving Beyond Twitter/X and Facebook - Social Media for local news providersMoving Beyond Twitter/X and Facebook - Social Media for local news providers
Moving Beyond Twitter/X and Facebook - Social Media for local news providersDamian Radcliffe
 
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...Delhi Call girls
 
'Future Evolution of the Internet' delivered by Geoff Huston at Everything Op...
'Future Evolution of the Internet' delivered by Geoff Huston at Everything Op...'Future Evolution of the Internet' delivered by Geoff Huston at Everything Op...
'Future Evolution of the Internet' delivered by Geoff Huston at Everything Op...APNIC
 
₹5.5k {Cash Payment}New Friends Colony Call Girls In [Delhi NIHARIKA] 🔝|97111...
₹5.5k {Cash Payment}New Friends Colony Call Girls In [Delhi NIHARIKA] 🔝|97111...₹5.5k {Cash Payment}New Friends Colony Call Girls In [Delhi NIHARIKA] 🔝|97111...
₹5.5k {Cash Payment}New Friends Colony Call Girls In [Delhi NIHARIKA] 🔝|97111...Diya Sharma
 
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting High Prof...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting  High Prof...VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting  High Prof...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting High Prof...singhpriety023
 
AWS Community DAY Albertini-Ellan Cloud Security (1).pptx
AWS Community DAY Albertini-Ellan Cloud Security (1).pptxAWS Community DAY Albertini-Ellan Cloud Security (1).pptx
AWS Community DAY Albertini-Ellan Cloud Security (1).pptxellan12
 
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...SUHANI PANDEY
 
(+971568250507 ))# Young Call Girls in Ajman By Pakistani Call Girls in ...
(+971568250507  ))#  Young Call Girls  in Ajman  By Pakistani Call Girls  in ...(+971568250507  ))#  Young Call Girls  in Ajman  By Pakistani Call Girls  in ...
(+971568250507 ))# Young Call Girls in Ajman By Pakistani Call Girls in ...Escorts Call Girls
 
Ganeshkhind ! Call Girls Pune - 450+ Call Girl Cash Payment 8005736733 Neha T...
Ganeshkhind ! Call Girls Pune - 450+ Call Girl Cash Payment 8005736733 Neha T...Ganeshkhind ! Call Girls Pune - 450+ Call Girl Cash Payment 8005736733 Neha T...
Ganeshkhind ! Call Girls Pune - 450+ Call Girl Cash Payment 8005736733 Neha T...SUHANI PANDEY
 
Al Barsha Night Partner +0567686026 Call Girls Dubai
Al Barsha Night Partner +0567686026 Call Girls  DubaiAl Barsha Night Partner +0567686026 Call Girls  Dubai
Al Barsha Night Partner +0567686026 Call Girls DubaiEscorts Call Girls
 

Último (20)

Call Girls In Ashram Chowk Delhi 💯Call Us 🔝8264348440🔝
Call Girls In Ashram Chowk Delhi 💯Call Us 🔝8264348440🔝Call Girls In Ashram Chowk Delhi 💯Call Us 🔝8264348440🔝
Call Girls In Ashram Chowk Delhi 💯Call Us 🔝8264348440🔝
 
All Time Service Available Call Girls Mg Road 👌 ⏭️ 6378878445
All Time Service Available Call Girls Mg Road 👌 ⏭️ 6378878445All Time Service Available Call Girls Mg Road 👌 ⏭️ 6378878445
All Time Service Available Call Girls Mg Road 👌 ⏭️ 6378878445
 
Call Now ☎ 8264348440 !! Call Girls in Sarai Rohilla Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Sarai Rohilla Escort Service Delhi N.C.R.Call Now ☎ 8264348440 !! Call Girls in Sarai Rohilla Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Sarai Rohilla Escort Service Delhi N.C.R.
 
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
 
WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)
WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)
WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)
 
Russian Call Girls in %(+971524965298 )# Call Girls in Dubai
Russian Call Girls in %(+971524965298  )#  Call Girls in DubaiRussian Call Girls in %(+971524965298  )#  Call Girls in Dubai
Russian Call Girls in %(+971524965298 )# Call Girls in Dubai
 
Real Men Wear Diapers T Shirts sweatshirt
Real Men Wear Diapers T Shirts sweatshirtReal Men Wear Diapers T Shirts sweatshirt
Real Men Wear Diapers T Shirts sweatshirt
 
Moving Beyond Twitter/X and Facebook - Social Media for local news providers
Moving Beyond Twitter/X and Facebook - Social Media for local news providersMoving Beyond Twitter/X and Facebook - Social Media for local news providers
Moving Beyond Twitter/X and Facebook - Social Media for local news providers
 
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
Hire↠Young Call Girls in Tilak nagar (Delhi) ☎️ 9205541914 ☎️ Independent Esc...
 
'Future Evolution of the Internet' delivered by Geoff Huston at Everything Op...
'Future Evolution of the Internet' delivered by Geoff Huston at Everything Op...'Future Evolution of the Internet' delivered by Geoff Huston at Everything Op...
'Future Evolution of the Internet' delivered by Geoff Huston at Everything Op...
 
₹5.5k {Cash Payment}New Friends Colony Call Girls In [Delhi NIHARIKA] 🔝|97111...
₹5.5k {Cash Payment}New Friends Colony Call Girls In [Delhi NIHARIKA] 🔝|97111...₹5.5k {Cash Payment}New Friends Colony Call Girls In [Delhi NIHARIKA] 🔝|97111...
₹5.5k {Cash Payment}New Friends Colony Call Girls In [Delhi NIHARIKA] 🔝|97111...
 
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting High Prof...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting  High Prof...VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting  High Prof...
VIP Model Call Girls Hadapsar ( Pune ) Call ON 9905417584 Starting High Prof...
 
Call Girls in Prashant Vihar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Prashant Vihar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort ServiceCall Girls in Prashant Vihar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Prashant Vihar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
 
AWS Community DAY Albertini-Ellan Cloud Security (1).pptx
AWS Community DAY Albertini-Ellan Cloud Security (1).pptxAWS Community DAY Albertini-Ellan Cloud Security (1).pptx
AWS Community DAY Albertini-Ellan Cloud Security (1).pptx
 
valsad Escorts Service ☎️ 6378878445 ( Sakshi Sinha ) High Profile Call Girls...
valsad Escorts Service ☎️ 6378878445 ( Sakshi Sinha ) High Profile Call Girls...valsad Escorts Service ☎️ 6378878445 ( Sakshi Sinha ) High Profile Call Girls...
valsad Escorts Service ☎️ 6378878445 ( Sakshi Sinha ) High Profile Call Girls...
 
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
 
(INDIRA) Call Girl Pune Call Now 8250077686 Pune Escorts 24x7
(INDIRA) Call Girl Pune Call Now 8250077686 Pune Escorts 24x7(INDIRA) Call Girl Pune Call Now 8250077686 Pune Escorts 24x7
(INDIRA) Call Girl Pune Call Now 8250077686 Pune Escorts 24x7
 
(+971568250507 ))# Young Call Girls in Ajman By Pakistani Call Girls in ...
(+971568250507  ))#  Young Call Girls  in Ajman  By Pakistani Call Girls  in ...(+971568250507  ))#  Young Call Girls  in Ajman  By Pakistani Call Girls  in ...
(+971568250507 ))# Young Call Girls in Ajman By Pakistani Call Girls in ...
 
Ganeshkhind ! Call Girls Pune - 450+ Call Girl Cash Payment 8005736733 Neha T...
Ganeshkhind ! Call Girls Pune - 450+ Call Girl Cash Payment 8005736733 Neha T...Ganeshkhind ! Call Girls Pune - 450+ Call Girl Cash Payment 8005736733 Neha T...
Ganeshkhind ! Call Girls Pune - 450+ Call Girl Cash Payment 8005736733 Neha T...
 
Al Barsha Night Partner +0567686026 Call Girls Dubai
Al Barsha Night Partner +0567686026 Call Girls  DubaiAl Barsha Night Partner +0567686026 Call Girls  Dubai
Al Barsha Night Partner +0567686026 Call Girls Dubai
 

Using Contextual Information to Understand Searching and Browsing Behavior

  • 1. Using Contextual Information to Understand Searching and Browsing Behavior Julia Kiseleva Eindhoven University of Technology Eindhoven, The Netherlands, June 2016
  • 2. Using Contextual Information to Understand Searching and Browsing Behavior
  • 3. Searching Behavior Want to go to CIKM conference QUERY SERP
  • 5. Using Contextual Information to Understand Searching and Browsing Behavior
  • 8. Contextual Information Explicit Context Implicit Context Contextual Situations (Android Tablet, Weekend) Photo credit: Delwin Steven Campbell via Visualhunt.com / CC BY
  • 9. Using Contextual Information to Understand Searching and Browsing Behavior
  • 10. Our Main Research Goal How to use contextual information in order to understand users’ searching and browsing behavior on the web? Improve Online User Experience
  • 12. Destination Finder Chapter 3 ‘Contextual Profiles’. L. Bernardi et al. The continuous cold start problem in e-commerce recommender systems. CBRecSys. 2015 J. Kiseleva et al. Where to go on your next trip? optimizing travel destinations based on user preferences. SIGIR. 2015
  • 13. Destination Finder Chapter 3 ‘Contextual Profiles’. L. Bernardi et al. The continuous cold start problem in e-commerce recommender systems. CBRecSys. 2015 J. Kiseleva et al. Where to go on your next trip? optimizing travel destinations based on user preferences. SIGIR. 2015
  • 14. Destination Finder Chapter 3 ‘Contextual Profiles’. L. Bernardi et al. The continuous cold start problem in e-commerce recommender systems. CBRecSys. 2015 J. Kiseleva et al. Where to go on your next trip? optimizing travel destinations based on user preferences. SIGIR. 2015
  • 15. Destination Finder Optimized Ranking of Destinations Using Contextual Situations Increased User Engagement (Click Trough Rate +3.7%) Chapter 3 ‘Contextual Profiles’. L. Bernardi et al. The continuous cold start problem in e-commerce recommender systems. CBRecSys. 2015 J. Kiseleva et al. Where to go on your next trip? optimizing travel destinations based on user preferences. SIGIR. 2015
  • 17. Applied Studies Browsing Behavior Searching Behavior &
  • 18. Changes in User Satisfaction Want to go to CIKM conference QUERY SERP Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’ J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014 J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015
  • 19. Changes in User Satisfaction QUERY SERP , Dynamic over Time Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’ J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014 J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015
  • 20. Changes in User Satisfaction Time Satisfaction Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’ J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014 J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015 QUERY , SERP
  • 21. Changes in User Satisfaction Time #Reformulations ~ Satisfaction Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’ J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014 J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015 2013 Oct NovSepAugJul QUERY , SERP
  • 22. Changes in User Satisfaction Before November 2013 After November 2013 Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’ J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014 J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015 QUERY= ‘flawless’
  • 23. Changes in User Satisfaction Before November 2013 After November 2013 Chapter 7 ‘Query Reformulations’ and Chapter 8 ‘Failed SERPs’ J. Kiseleva et al. Modelling and detecting changes in user satisfaction. CIKM. 2014 J. Kiseleva et al. Behavioral dynamics from the SERP’s perspective: What are failed SERPs and how to fix them? CIKM. 2015 QUERY= ‘flawless’
  • 24. Applied Studies Browsing Behavior Searching Behavior & Cortana: “What can I help you do now?”
  • 25. Q1: how is the weather in Chicago Q2: how is it this weekend Q3: find me hotels Q4: which one of these is the cheapest Q5: which one of these has at least 4 stars Q6: find me directions from the Chicago airport to number one User’s dialogue with Cortana: Task is “Finding a hotel in Chicago” Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’ J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016 J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
  • 26. Q1: find me a pharmacy nearby Q2: which of these is highly rated Q3: show more information about number 2 Q4: how long will it take me to get there Q5: Thanks User’s dialogue with Cortana: Task is “Finding a pharmacy” Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’ J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016 J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
  • 27. Cortana: “Here are ten restaurants near you” Cortana: “Here are ten restaurants near you that have good reviews” Cortana: “Getting you direction to the Mayuri Indian Cuisine” User: “show restauran ts near me” User: “show the best ones” User: “show directions to the second one”
  • 28. Cortana: “Here are ten restaurants near you” Cortana: “Here are ten restaurants near you that have good reviews” Cortana: “Getting you direction to the Mayuri Indian Cuisine” User: “show restauran ts near me” User: “show the best ones” User: “show directions to the second one” No Clicks ???
  • 29. Cortana: “Here are ten restaurants near you” Cortana: “Here are ten restaurants near you that have good reviews” Cortana: “Getting you direction to the Mayuri Indian Cuisine” User: “show restauran ts near me” User: “show the best ones” User: “show directions to the second one” SAT? SAT? SAT ? Overall SAT? ? SAT? SAT? SAT ?
  • 30. Acoustic Similarity Phonetic Similarity Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’ J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016 J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
  • 31. Tracking User Interaction Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’ J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016 J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
  • 32. 3 seconds 6 seconds 33% of ViewPort 66% of ViewPort ViewPortHeight 2 seconds 20% of ViewPort 1s 4s 0.4s 5.4s+ + = Tracking User Interaction Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’ J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016 J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
  • 33. Quality of Interaction Model Method Accuracy (%) Average F1 (%) Baseline 70.62 61.38 Interaction Model 80.81* (14.43) 79.08* (28.83) * Statistically significant improvement (p < 0,05 ) Chapter 4 ‘Intelligent Assistants’ and Chapter 5 ‘Search Dialogues’ J. Kiseleva et al. Understanding user satisfaction with intelligent assistants. CHIIR 2016 J. Kiseleva et al. Predicting user satisfaction with intelligent assistants. SIGIR 2016
  • 34. • Contextual information should be taken into account to understand web and mobile users’ behavior • Analyzing behavioral signals over time is needed to detect changes in user satisfaction with web search • Touch signals are crucial for inferring user satisfaction with intelligent assistants on mobile devices Conclusion

Notas del editor

  1. Examples of contexts Examples of understanding What is searching and Browsing behavior
  2. Search Satisfaction vs dsat
  3. Remove the text Browsing
  4. Examples of contexts Examples of understanding What is searching and Browsing behavior Color Remove the affliations
  5. Emph. Implicit and explicit Try to discover
  6. Examples of contexts Examples of understanding What is searching and Browsing behavior
  7. Replace to use Think how to make it pict. To improve user expertise
  8. Use based on implcit context Remove CTR leave UE
  9. Consider movie recommendation
  10. Conclusion from presentation
  11. Add qr code