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Hard and soft clustering of categorical time series based on two novel distances with an application to biological sequences

Ángel López‐Oriona, José A. Vilar, Pierpaolo D’Urso

2022Information Sciences15 citationsDOIOpen Access PDF

Abstract

Two novel distances between categorical time series are introduced. Both of them measure discrepancy between extracted features describing the underlying serial dependence patterns. One distance is based on well-known association measures, namely Cramer’s v and Cohen’s κ. The other one relies on the so-called binarization of a categorical process, which indicates the presence of each category by means of a canonical vector. Binarization is used to construct a set of innovative association measures, which allow to identify different types of serial dependence. The metrics are used to perform crisp and fuzzy clustering of nominal series. The proposed approaches are able to group together series generated from similar stochastic processes, achieve accurate results with series coming from a broad range of models, and are computationally efficient. Extensive simulation studies show that both hard and soft clustering algorithms outperform several alternative procedures presented in the literature. Two applications involving biological sequences from different species highlight the usefulness of the introduced techniques.

Topics & Concepts

Categorical variableCluster analysisSeries (stratigraphy)Computer sciencePattern recognition (psychology)Data miningSet (abstract data type)Measure (data warehouse)Fuzzy clusteringArtificial intelligenceRange (aeronautics)Construct (python library)MathematicsMachine learningBiologyComposite materialMaterials scienceProgramming languagePaleontologyTime Series Analysis and ForecastingComplex Systems and Time Series AnalysisSensory Analysis and Statistical Methods