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Modelling the Stochastic Component of Behaviour in Experiments: Some Issues for the Interpretation of Data

Published online by Cambridge University Press:  14 March 2025

Graham Loomes*
Affiliation:
University of East Anglia

Abstract

This paper considers some of the questions raised by the fact that people's behaviour—including their behaviour in experimental environments—has a stochastic component. The nature of this component may be crucial to the interpretation of the patterns of data we observe and the choice of statistical criteria for favouring one hypothesis at the expense of others. However, it is arguable that insufficient consideration has been given to the way(s) in which the stochastic element is modelled. The paper aims to explore some of the issues involved.

Type
Research Article
Copyright
Copyright © 2005 Economic Science Association

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