Litcius/Paper detail

Functional data clustering using principal curve methods

Ruhao Wu, Bo Wang, Aiping Xu

2021Communication in Statistics- Theory and Methods29 citationsDOIOpen Access PDF

Abstract

In this paper we propose a novel clustering method for functional data based on the principal curve clustering approach. By this method functional data are approximated using functional principal component analysis (FPCA) and the principal curve clustering is then performed on the principal scores. The proposed method makes use of the nonparametric principal curves to summarize the features of the principal scores extracted from the original functional data, and a probabilistic model combined with Bayesian Information Criterion is employed to automatically and simultaneously find the appropriate number of features, the optimal degree of smoothing and the corresponding cluster members. The simulation studies show that the proposed method outperforms the existing functional clustering approaches considered. The capability of this method is also demonstrated by the applications in the human mortality and fertility data.

Topics & Concepts

Functional principal component analysisCluster analysisPrincipal component analysisFunctional data analysisComputer scienceSmoothingData miningClustering high-dimensional dataPrincipal (computer security)Probabilistic logicBayesian information criterionArtificial intelligenceNonparametric statisticsPattern recognition (psychology)MathematicsMachine learningStatisticsComputer visionOperating systemBayesian Methods and Mixture ModelsAdvanced Clustering Algorithms ResearchGene expression and cancer classification