2016
DOI: 10.1080/00273171.2016.1246996
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Two-Way Regularized Fuzzy Clustering of Multiple Correspondence Analysis

Abstract: Multiple correspondence analysis (MCA) is a useful tool for investigating the interrelationships among dummy-coded categorical variables. MCA has been combined with clustering methods to examine whether there exist heterogeneous subclusters of a population, which exhibit cluster-level heterogeneity. These combined approaches aim to classify either observations only (one-way clustering of MCA) or both observations and variable categories (two-way clustering of MCA). The latter approach is favored because its so… Show more

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Cited by 4 publications
(3 citation statements)
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“…In future versions of the package, the authors will seek to include fuzzy extensions of the methods currently implemented, such as fuzzy MCA K-means (Hwang, Dillon, and Takane 2010) and two-way regularized fuzzy MCA K-means (Kim, Choi, and Hwang 2017). These approaches typically require the selection of a fuzzy scalar or weight, which controls the fuzziness of the clustering solution.…”
Section: Resultsmentioning
confidence: 99%
“…In future versions of the package, the authors will seek to include fuzzy extensions of the methods currently implemented, such as fuzzy MCA K-means (Hwang, Dillon, and Takane 2010) and two-way regularized fuzzy MCA K-means (Kim, Choi, and Hwang 2017). These approaches typically require the selection of a fuzzy scalar or weight, which controls the fuzziness of the clustering solution.…”
Section: Resultsmentioning
confidence: 99%
“…Multiple correspondence analysis and hierarchical clustering MCA is a popular data reduction technique for exploring the associations among multiple categorical variables (35) , which allows for the use of 'active' and 'illustrative' variables. The active ones determine the structure of the factorial space produced by the MCA.…”
Section: Statistical Analysesmentioning
confidence: 99%
“…Latent block clustering methods have been proposed using a Poisson model, for example in information retrieval (Li & Zha, 2006), or for sequencing data (Witten, 2011), among others. With the aim of reducing the number of parameters and at the same time to facilitate the interpretation, clustering and representation methods have been proposed in different areas for different data sets (see, e.g., Kim, Choi, & Hwang, 2017;Vera, Mac ıas, & Heiser, 2009a, Vera, Mac ıas, & Heiser, 2009bVera, Mac ıas, & Heiser, 2013).…”
Section: Introductionmentioning
confidence: 99%