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Uncovering interactions in multivariate contingency tables: a multi-level modelling exploratory approach

Research output: Contribution to journalArticle

Original languageEnglish
Number of pages17
JournalMethodological Innovations
Volume9
Early online date24 Oct 2016
DOIs
DateAccepted/In press - 27 Aug 2016
DateE-pub ahead of print - 24 Oct 2016
DatePublished (current) - Dec 2016

Abstract

Much quantitative behavioural social science – a great deal of it exploratory in nature – involves the analysis of multivariate contingency tables, usually deploying logistic binomial and multinomial regression models with no exploration of interaction effects, despite arguments that this should be a crucial element of the analysis. This paper builds on suggestions that the search for interaction effects should employ multi-level modelling strategies and outlines a procedure for modelling patterns in data sets with small numbers of observations in many, if not all, of their multivariate contingency table cells; all expected cells must be non-zero. The procedure produces precision-weighted estimates of the observed:expected rates for each and every cell, together with associated Bayesian credible intervals, and is illustrated using a large survey data set relating voting (and abstaining)at the 2015 UK general election to age, sex and educational qualifications. Crucially while fine detail can be explored in the analysis unreliable rates for particular subgroups are automatically down-weighted to what is happening generally. The identification of reliable differential rates then allows a simpler hybrid model that captures the main trends to be fitted and interpreted.

    Research areas

  • multivariate contingency tables, interactions, multi-level modelling, Bayesian inference, exploratory data analysis, voting in Britain

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    Rights statement: This is the final published version of the article (version of record). It first appeared online via Sage at http://mio.sagepub.com/content/9/2059799116672874.short. Please refer to any applicable terms of use of the publisher.

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    Licence: CC BY-NC

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