Litcius/Paper detail

Spectral Clustering of Mixed-Type Data

Felix Mbuga, Cristina Tortora

2021Stats14 citationsDOIOpen Access PDF

Abstract

Cluster analysis seeks to assign objects with similar characteristics into groups called clusters so that objects within a group are similar to each other and dissimilar to objects in other groups. Spectral clustering has been shown to perform well in different scenarios on continuous data: it can detect convex and non-convex clusters, and can detect overlapping clusters. However, the constraint on continuous data can be limiting in real applications where data are often of mixed-type, i.e., data that contains both continuous and categorical features. This paper looks at extending spectral clustering to mixed-type data. The new method replaces the Euclidean-based similarity distance used in conventional spectral clustering with different dissimilarity measures for continuous and categorical variables. A global dissimilarity measure is than computed using a weighted sum, and a Gaussian kernel is used to convert the dissimilarity matrix into a similarity matrix. The new method includes an automatic tuning of the variable weight and kernel parameter. The performance of spectral clustering in different scenarios is compared with that of two state-of-the-art mixed-type data clustering methods, k-prototypes and KAMILA, using several simulated and real data sets.

Topics & Concepts

Cluster analysisSpectral clusteringPattern recognition (psychology)MathematicsCategorical variablek-medians clusteringKernel (algebra)Correlation clusteringClustering high-dimensional dataSimilarity (geometry)Single-linkage clusteringArtificial intelligenceCURE data clustering algorithmData miningComputer scienceStatisticsCombinatoricsImage (mathematics)Advanced Clustering Algorithms ResearchRemote-Sensing Image ClassificationFace and Expression Recognition