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IB9MH-15 Analytics for Behavioural Research

Department
Warwick Business School
Level
Taught Postgraduate Level
Module leader
Tim Mullett
Credit value
15
Module duration
10 weeks
Assessment
100% coursework
Study location
University of Warwick main campus, Coventry

Introductory description

This module aims to provide doctoral students with skills and knowledge in quantitative analysis, particularly as it relates to behavioural data.

Module aims

Understand how behavioural data can be used to conduct world leading research in business and management.
Develop skills to interpret the results and analyses in world leading behavioural research.
Develop skills to design and apply appropriate analysis strategies with behavioural data.

Outline syllabus

This is an indicative module outline only to give an indication of the sort of topics that may be covered. Actual sessions held may differ.

  1. Data quality and preparation/cleaning of behavioural data
  2. Experiment design
  3. Estimating and measuring statistical power for behavioural research design
  4. Quasi experimental data
  5. Generalized Linear Model as applied to behavioural data analysis
  6. Logistic regression and choice data
  7. Random effects and multi-level models for individual differences
  8. Behavioural process data (incl. reaction time analysis)
  9. Model comparison/competition and hypothesis testing in behavioural theories
  10. Parameter estimation in models of behaviour/decision making

Learning outcomes

By the end of the module, students should be able to:

  • Understand the strengths and limitations of different types of behavioural data
  • Design appropriate analysis strategies for behavioural data to robustly test hypotheses
  • Implement analyses using appropriate statistical packages and software, and interpret the results

Indicative reading list

Howell, D. C. (2017) Fundamental statistics for the behavioral sciences. 9th edn. Belmont, CA: Duxbury Press.
Cumming, G. (2014) ‘The new statistics: Why and how’, Psychological Science, 25, pp. 7–29
Cumming, G. and Calin-Jageman, R. (2016) Introduction to the new statistics: Estimation, open science, and beyond. New York:
Routledge.
Russo, R. (2003) Statistics for the behavioural sciences: an introduction. 1st edn. New York, N.Y. : Psychology Press

Subject specific skills

Understand the strengths and limitations of different types of behavioural data.
Design appropriate analysis strategies for behavioural data to robustly test hypotheses.
Implement analyses using appropriate statistical packages and software, and interpret the results.
An in-depth knowledge of how behavioural data can be used in management research.
An in-depth understanding of assumptions underlying quantitative analyses with behavioural data.
An in-depth knowledge of analytics tools commonly used in modern behavioural data analysis.

Transferable skills

Problem solving abilities
Communication skills.
Analytical skills.
Confidence as user of statistical software.

Study time

Type Required
Lectures 10 sessions of 3 hours (20%)
Private study 48 hours (32%)
Assessment 72 hours (48%)
Total 150 hours

Private study description

Reflective learning and reading.

Costs

No further costs have been identified for this module.

You must pass all assessment components to pass the module.

Assessment group A
Weighting Study time Eligible for self-certification
Assessment component
Individual assignment 100% 72 hours Yes (extension)
Reassessment component is the same
Feedback on assessment

Module leader feedback.

There is currently no information about the courses for which this module is core or optional.