E-ReMI: Extended Maximal Interaction Two-mode Clustering

Zaheer Ahmed, Alberto Cassese, Gerard van Breukelen, Jan Schepers*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

In this paper, we present E-ReMI, a new method for studying two-way interaction in row by column (i.e., two-mode) data. E-ReMI is based on a probabilistic two-mode clustering model that yields a two-mode partition of the data with maximal interaction between row and column clusters. The proposed model extends REMAXINT by allowing for unequal cluster sizes for the row clusters, thus introducing more flexibility in the model. In the manuscript, we use a conditional classification likelihood approach to derive the maximum likelihood estimates of the model parameters. We further introduce a test statistic for testing the null hypothesis of no interaction, discuss its properties and propose an algorithm to obtain its distribution under this null hypothesis. Free software to apply the methods described in this paper is developed in the R language. We assess the performance of the new method and compare it with competing methodologies through a simulation study. Finally, we present an application of the methodology using data from a study of person by situation interaction.
Original languageEnglish
Pages (from-to)298-331
Number of pages34
JournalJournal of Classification
Volume40
Issue number2
Early online date10 May 2023
DOIs
Publication statusPublished - Jul 2023

Keywords

  • Bicluster interaction effect parameters
  • Penalized classification maximum likelihood
  • Likelihood ratio
  • Monte Carlo sampling
  • PARAMETRIC BOOTSTRAP
  • TESTING ADDITIVITY
  • MODELS
  • DYNAMICS
  • PERSONALITY
  • NUMBER
  • TABLES
  • AMMI

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