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$k$-means clustering of extremes

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abstract

The $k$-means clustering algorithm and its variant, the spherical $k$-means clustering, are among the most important and popular methods in unsupervised learning and pattern detection. In this paper, we explore how the spherical $k$-means algorithm can be applied in the analysis of only the extremal observations from a data set. By making use of multivariate extreme value analysis we show how it can be adopted to find "prototypes" of extremal dependence and we derive a consistency result for our suggested estimator. In the special case of max-linear models we show furthermore that our procedure provides an alternative way of statistical inference for this class of models. Finally, we provide data examples which show that our method is able to find relevant patterns in extremal observations and allows us to classify extremal events.

fields

math.ST 1

years

2019 1

verdicts

UNVERDICTED 1

representative citing papers

Principal Component Analysis for Multivariate Extremes

math.ST · 2019-06-26 · unverdicted · novelty 6.0

Applies PCA to re-scaled exceedances under regular variation and proves uniform convergence of empirical reconstruction risk plus consistency of the estimated optimal projection subspace.

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  • Principal Component Analysis for Multivariate Extremes math.ST · 2019-06-26 · unverdicted · none · ref 18 · internal anchor

    Applies PCA to re-scaled exceedances under regular variation and proves uniform convergence of empirical reconstruction risk plus consistency of the estimated optimal projection subspace.