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On changepoint detection in functional data using empirical energy distance

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posted on 2025-06-16, 14:36 authored by B Cooper Boniece, Lajos Horváth, Lorenzo TrapaniLorenzo Trapani
We propose a novel family of test statistics to detect the presence of changepoints in a sequence of dependent, possibly multivariate, functional-valued observations. Our approach allows to test for a very general class of changepoints, including the “classical” case of changes in the mean, and even changes in the whole distribution. Our statistics are based on a generalisation of the empirical energy distance; we propose weighted functionals of the energy distance process, which are designed in order to enhance the ability to detect breaks occurring at sample endpoints. The limiting distribution of the maximally selected version of our statistics requires only the computation of the eigenvalues of the covariance function, thus being readily implementable in the most commonly employed packages, e.g. R. We show that, under the alternative, our statistics are able to detect changepoints occurring even very close to the beginning/end of the sample. In the presence of multiple changepoints, we propose a binary segmentation algorithm to estimate the number of breaks and the locations thereof. Simulations show that our procedures work very well in finite samples. We complement our theory with applications to financial and temperature data.

History

Author affiliation

College of Business Economics

Version

  • VoR (Version of Record)

Published in

Journal of Econometrics

Volume

250

Pagination

106023

Publisher

Elsevier BV

issn

0304-4076

eissn

1872-6895

Copyright date

2025

Available date

2025-06-16

Language

en

Deposited by

Professor Lorenzo Trapani

Deposit date

2025-06-13

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