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The profile of the management 
(data) scientist: Potential scenarios 
and skills for B/SMD-based 
Management research 
Juan Mateos-Garcia, Nesta P&R 
NEMODE PDW 
BAM Conference 9-11 September, 2014
Organisational + personal context 
• Nesta: The UK’s innovation foundation., 
Figure III.3: Video game company incorporation across the UK 
1980s or earlier 1990s 
2000s 2010s 
periods 1980s or earlier 1990s 2000s 2010s 
with a mission to help people and 
organisations bring great ideas to life. 
• Doing research on data skills for BIS data 
capability strategy in partnership with RSS 
and Creative Skillset 
• Doing some ‘big’ data work myself 
• I used to do management research 
(CENTRIM). 
Draw on all this to reflect on the 
implications of big data for management 
research, focusing on skills. 
2
More online activity, digital processes, better hardware. 
Data-driven (automated, 
personalised) products, 
1. Definitions 
processes and services. New 
formats for data communication 
More 
varieties 
of data 
Generated 
at faster 
velocities 
Larger 
volumes 
of data 
New 
applications 
3
More complexity 
4
New opportunities for researchers 
• Coverage: Large samples 
• Revelation: Make the invisible 
visible, reveal preferences, run 
experiments. 
• Granularity: High level of 
resolution (temporal + 
dimensional). 
• Cheap! £££ 
5
3. MOR examples 
I looked at abstracts of 103 papers in last three issues of [1] AOMJ, 
[2] BJM, [3] Management Science. No ‘big data’ papers in [1] and 
[2]. 11 in MS (8 in a ‘Business Analytics’ special issue) 
Data source Topic 
Aral + 
Walker 
Facebook 
(Proprietary) 
Use RCTs to study social influence. Large samples and high levels of 
granularity allows them to consider how social influence interacts with tie 
embeddedness and tie strength. 
Bao + 
Datta 
SEC (Open) Use unsupervised learning to identify and quantify risk types in ~14,000 
annual reports, benchmark them against other methods for classification, 
and develop an interactive platform to explore the findings. 
Goshe 
+ Han 
App Store + 
Google Play 
(open) 
Scrape App Store and Google Play data to create a sales panel they use to 
estimate consumer demand and how it is affected by App features, 
including pricing model. 
Tambe LinkedIn 
(Proprietary) 
Quantify business big data capabilities and measure inter-company 
recruitment networks to estimate inter-company skill investment spillover 
6
Technical skills required, or the profile of 
the management data scientist 
Get data: Web scraping/API programming skills 
Run experiments: Experimental designs 
Manage and process the data: Database management 
Clean the data: ‘wrangling’ (and patience). 
Initial visualisation: Exploratory data analysis 
Dimension reduction: Cluster analysis, PCA. 
Model selection, estimation, evaluation: 
Econometrics/statistics/machine learning 
Display findings visually + interactively: Data visualisation 
Access 
data 
Model 
data 
Present 
findings 
Data Pipeline 
7
Challenges (not all technical) 
Obtain proprietary data 
Manage anonymity and ethical issues (including 
experimental research cf. Facebook infamous 
RCT). 
Ask the right questions: “The best dimension 
reduction tool that there is.” 
Be careful with biases: N = All? Rarely. It is 
important to understand the (administrative and 
organisational) processes that generated the data. 
Dealing with false positives bound to happen 
with large samples and multiple tests. 
Encouraging consilience through reproducibility 
and relating finding to wider bodies of knowledge 
Access 
data 
Model 
data 
Present 
findings 
Data Pipeline 
8 
Requires theory and domain knowledge
Institutional solutions 
9 
• People with technical skills and domain 
knowledge are rare -> Unicorns. 
• Supply push + Demand pull to increase 
MOR big data capabilities. 
• Internal dialogue within the discipline 
and with other disciplines (Computer 
Science, Information Systems) 
• Acknowledge big data limitations for 
looking at important issues (power, 
perceptions, structural change.)
10 
THANK YOU 
Juan.mateos-garcia@nesta.org.uk 
@JMateosGarcia

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The profile of the management (data) scientist: Potential scenarios and skills for B/SMD-based Management research

  • 1. The profile of the management (data) scientist: Potential scenarios and skills for B/SMD-based Management research Juan Mateos-Garcia, Nesta P&R NEMODE PDW BAM Conference 9-11 September, 2014
  • 2. Organisational + personal context • Nesta: The UK’s innovation foundation., Figure III.3: Video game company incorporation across the UK 1980s or earlier 1990s 2000s 2010s periods 1980s or earlier 1990s 2000s 2010s with a mission to help people and organisations bring great ideas to life. • Doing research on data skills for BIS data capability strategy in partnership with RSS and Creative Skillset • Doing some ‘big’ data work myself • I used to do management research (CENTRIM). Draw on all this to reflect on the implications of big data for management research, focusing on skills. 2
  • 3. More online activity, digital processes, better hardware. Data-driven (automated, personalised) products, 1. Definitions processes and services. New formats for data communication More varieties of data Generated at faster velocities Larger volumes of data New applications 3
  • 5. New opportunities for researchers • Coverage: Large samples • Revelation: Make the invisible visible, reveal preferences, run experiments. • Granularity: High level of resolution (temporal + dimensional). • Cheap! £££ 5
  • 6. 3. MOR examples I looked at abstracts of 103 papers in last three issues of [1] AOMJ, [2] BJM, [3] Management Science. No ‘big data’ papers in [1] and [2]. 11 in MS (8 in a ‘Business Analytics’ special issue) Data source Topic Aral + Walker Facebook (Proprietary) Use RCTs to study social influence. Large samples and high levels of granularity allows them to consider how social influence interacts with tie embeddedness and tie strength. Bao + Datta SEC (Open) Use unsupervised learning to identify and quantify risk types in ~14,000 annual reports, benchmark them against other methods for classification, and develop an interactive platform to explore the findings. Goshe + Han App Store + Google Play (open) Scrape App Store and Google Play data to create a sales panel they use to estimate consumer demand and how it is affected by App features, including pricing model. Tambe LinkedIn (Proprietary) Quantify business big data capabilities and measure inter-company recruitment networks to estimate inter-company skill investment spillover 6
  • 7. Technical skills required, or the profile of the management data scientist Get data: Web scraping/API programming skills Run experiments: Experimental designs Manage and process the data: Database management Clean the data: ‘wrangling’ (and patience). Initial visualisation: Exploratory data analysis Dimension reduction: Cluster analysis, PCA. Model selection, estimation, evaluation: Econometrics/statistics/machine learning Display findings visually + interactively: Data visualisation Access data Model data Present findings Data Pipeline 7
  • 8. Challenges (not all technical) Obtain proprietary data Manage anonymity and ethical issues (including experimental research cf. Facebook infamous RCT). Ask the right questions: “The best dimension reduction tool that there is.” Be careful with biases: N = All? Rarely. It is important to understand the (administrative and organisational) processes that generated the data. Dealing with false positives bound to happen with large samples and multiple tests. Encouraging consilience through reproducibility and relating finding to wider bodies of knowledge Access data Model data Present findings Data Pipeline 8 Requires theory and domain knowledge
  • 9. Institutional solutions 9 • People with technical skills and domain knowledge are rare -> Unicorns. • Supply push + Demand pull to increase MOR big data capabilities. • Internal dialogue within the discipline and with other disciplines (Computer Science, Information Systems) • Acknowledge big data limitations for looking at important issues (power, perceptions, structural change.)
  • 10. 10 THANK YOU Juan.mateos-garcia@nesta.org.uk @JMateosGarcia