We introduce a clustering method for time series based on tail dependence. Such a method also considers spatial constraints by means of a suitable procedure merging temporal and spatial dependence via extreme-value copulas. The cluster composition depends on the choice of the hyper-parameter used to calibrate the contribution of the spatial dependence to the overall dissimilarity. A novel heuristic approach to select based on a suitable connectedness index associated to each cluster of the partition is proposed.

Tail-dependence clustering of time series with spatial constraints

A. Benevento;F. Durante;
2024-01-01

Abstract

We introduce a clustering method for time series based on tail dependence. Such a method also considers spatial constraints by means of a suitable procedure merging temporal and spatial dependence via extreme-value copulas. The cluster composition depends on the choice of the hyper-parameter used to calibrate the contribution of the spatial dependence to the overall dissimilarity. A novel heuristic approach to select based on a suitable connectedness index associated to each cluster of the partition is proposed.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11587/534388
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