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Clustering mixed-type data using a probabilistic distance algorithm

Cristina Tortora, Francesco Palumbo

2022Applied Soft Computing14 citationsDOIOpen Access PDF

Abstract

Cluster analysis is a broadly used unsupervised data analysis technique for finding groups of homogeneous units in a data set. Probabilistic distance clustering adjusted for cluster size (PDQ), discussed in this contribution, falls within the broad category of clustering methods initially developed to deal with continuous data; it has the advantage of fuzzy membership and robustness. However, a common issue in clustering deals with treating mixed-type data: continuous and categorical, which are among the most common types of data. This paper extends PDQ for mixed-type data using different dissimilarities for different kinds of variables. At first, the PDQ for mixed-type data is defined, then a simulation design shows its advantages compared to some state of the art techniques, and ultimately, it is used on a real data set. The conclusion includes some future developments.

Topics & Concepts

Cluster analysisCategorical variableData miningComputer scienceFuzzy clusteringProbabilistic logicCURE data clustering algorithmData typeData setDetermining the number of clusters in a data setSingle-linkage clusteringRobustness (evolution)Correlation clusteringAlgorithmArtificial intelligenceMachine learningGeneProgramming languageChemistryBiochemistryAdvanced Clustering Algorithms ResearchBayesian Methods and Mixture ModelsFace and Expression Recognition
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