We deal with two-way contingency tables having ordered column categories.We use a row effects model wherein each interaction term is assumed to have a multiplicative form involving a row effect parameter and a fixed column score.We propose a methodology to cluster row effects in order to simplify the interaction structure and to enhance the interpretation of the model. Our method uses a product partition model with a suitable specification of the cohesion function, so that we can carry out our analysis on a collection of models of varying dimensions using a straightforward MCMC sampler. The methodology is illustrated with reference to simulated and real data sets
Multinomial processing tree (MPT) models are theoretically motivated stochastic models for the analy...
This thesis contains an investigation of the effects of categorical data clustering on three estimat...
In many applications, it is of interest to simultaneously cluster row and column variables in a data...
We deal with two-way contingency tables having ordered column categories.We use a row effects model ...
This manuscript is concerned with relating two approaches that can be used to explore complex depend...
AbstractThis manuscript is concerned with relating two approaches that can be used to explore comple...
This work was supported by MRC grant G1002319.This manuscript is concerned with relating two approac...
An important task in data mining is to identify natural clusters in data. Relational clustering [1],...
Most classical approaches for two-mode clustering of a data matrix are designed to attain homogeneou...
<p>Fixed effects models are very flexible because they do not make assumptions on the distribution o...
Summary. We consider clustering with regression, i.e., we develop a probability model for random par...
This article establishes a general formulation for Bayesian model-based clustering, in which subset ...
We present a novel method, REMAXINT, that captures the gist of two-way interaction in row by column ...
We present a novel method, REMAXINT, that captures the gist of two-way interaction in row by column ...
Existing methods can perform likelihood-based clustering on a multivariate data matrix of ordinal da...
Multinomial processing tree (MPT) models are theoretically motivated stochastic models for the analy...
This thesis contains an investigation of the effects of categorical data clustering on three estimat...
In many applications, it is of interest to simultaneously cluster row and column variables in a data...
We deal with two-way contingency tables having ordered column categories.We use a row effects model ...
This manuscript is concerned with relating two approaches that can be used to explore complex depend...
AbstractThis manuscript is concerned with relating two approaches that can be used to explore comple...
This work was supported by MRC grant G1002319.This manuscript is concerned with relating two approac...
An important task in data mining is to identify natural clusters in data. Relational clustering [1],...
Most classical approaches for two-mode clustering of a data matrix are designed to attain homogeneou...
<p>Fixed effects models are very flexible because they do not make assumptions on the distribution o...
Summary. We consider clustering with regression, i.e., we develop a probability model for random par...
This article establishes a general formulation for Bayesian model-based clustering, in which subset ...
We present a novel method, REMAXINT, that captures the gist of two-way interaction in row by column ...
We present a novel method, REMAXINT, that captures the gist of two-way interaction in row by column ...
Existing methods can perform likelihood-based clustering on a multivariate data matrix of ordinal da...
Multinomial processing tree (MPT) models are theoretically motivated stochastic models for the analy...
This thesis contains an investigation of the effects of categorical data clustering on three estimat...
In many applications, it is of interest to simultaneously cluster row and column variables in a data...