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arxiv: 1509.08144 · v2 · pith:P77WWDO4new · submitted 2015-09-27 · 💻 cs.LG · stat.ML

Optimal Copula Transport for Clustering Multivariate Time Series

classification 💻 cs.LG stat.ML
keywords multivariateseriestimeoptimaltransportclusteringcopulacopulas
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This paper presents a new methodology for clustering multivariate time series leveraging optimal transport between copulas. Copulas are used to encode both (i) intra-dependence of a multivariate time series, and (ii) inter-dependence between two time series. Then, optimal copula transport allows us to define two distances between multivariate time series: (i) one for measuring intra-dependence dissimilarity, (ii) another one for measuring inter-dependence dissimilarity based on a new multivariate dependence coefficient which is robust to noise, deterministic, and which can target specified dependencies.

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