AI RESEARCH

Automated regime classification in multidimensional time series data using sliced Wasserstein k-means clustering

arXiv CS.LG

ArXi:2310.01285v2 Announce Type: replace-cross Recent work has proposed Wasserstein k-means (Wk-means) clustering as a powerful method to classify regimes in time series data, and one-dimensional asset returns in particular. In this paper, we begin by studying in detail the behaviour of the Wasserstein k-means clustering algorithm applied to synthetic one-dimensional time series data. We extend the previous work by studying, in detail, the dynamics of the clustering algorithm and how varying the hyperparameters impacts the performance over different random initialisations.