New methodologies for modelling individual differences in cognition.

dc.contributor.advisorDunn, John Cameronen
dc.contributor.authorWebb, Michael Royen
dc.contributor.schoolSchool of Psychologyen
dc.date.issued2010en
dc.description.abstractMany evaluations of cognitive models rely on data that have been averaged or aggregated across all experimental subjects, and so fail to consider the possibility of important individual differences between subjects. Other evaluations are done at the single-subject level, and so fail to benefit from the reduction of noise that data averaging or aggregation potentially provides. To overcome these weaknesses, new approaches to modelling individual differences have been developed. The first approach uses families of cognitive models in which different groups of subjects are identified as having different psychological behaviour. Separate models with separate parameterisations are applied to each group of subjects, and Bayesian model selection is used to determine the appropriate number of groups. Practical demonstrations of the approach using the ALCOVE model of category learning (Kruschke 1992) with data from four previously analysed category learning experiments(Kruschke 1993a) are reported. A second approach builds on the first by substituting a more complete Bayesian analysis for the Bayesian model selection. This latter approach has been developed and applied to a range of cognitive models by Lee (2008), and has also been applied in this present work, to a causal inferencing task (Steyvers, Tenenbaum, Wagenmakers & Blum 2003). Its results are contrasted with the application of the prior Bayesian model selection approach to the same task. In both demonstrations presented in this thesis, meaningful individual differences are found and the psychological models are shown to be able to account for this variation through interpretable differences in parameterisation. These results highlight the value of extending cognitive models to consider individual differences.en
dc.description.dissertationThesis (M.Med.Sc.) -- University of Adelaide, School of Psychology, 2010en
dc.identifier.urihttp://hdl.handle.net/2440/62779
dc.provenanceCopyright material removed from digital thesis. See print copy in University of Adelaide Library for full text.en
dc.subjectcognitive models; individual differences; Bayesian graphical modellingen
dc.titleNew methodologies for modelling individual differences in cognition.en
dc.typeThesisen

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