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Detecting changes in mean in the presence of time‐varying autocovariance

Detecting changes in mean in the presence of time‐varying autocovariance
Detecting changes in mean in the presence of time‐varying autocovariance
There has been much attention in recent years to the problem of detecting mean changes in a piecewise constant time series. Often, methods assume that the noise can be taken to be independent, identically distributed (IID), which in practice may not be a reasonable assumption. There is comparatively little work studying the problem of mean changepoint detection in time series with nontrivial autocovariance structure. In this article, we propose a likelihood-based method using wavelets to detect changes in mean in time series that exhibit time-varying autocovariance. Our proposed technique is shown to work well for time series with a variety of error structures via a simulation study, and we demonstrate its effectiveness on two data examples arising in economics.
2049-1573
McGonigle, Euan T.
1eec7a96-1343-4bf5-a131-432fe50842cd
Killick, Rebecca
c954436d-0b66-4ceb-bc63-bdf247ebee48
Nunes, Matthew A.
77bbd810-4dd8-4962-a2b3-c08205b4f54a
McGonigle, Euan T.
1eec7a96-1343-4bf5-a131-432fe50842cd
Killick, Rebecca
c954436d-0b66-4ceb-bc63-bdf247ebee48
Nunes, Matthew A.
77bbd810-4dd8-4962-a2b3-c08205b4f54a

McGonigle, Euan T., Killick, Rebecca and Nunes, Matthew A. (2021) Detecting changes in mean in the presence of time‐varying autocovariance. Stat, 10 (1), [e351]. (doi:10.1002/sta4.351).

Record type: Article

Abstract

There has been much attention in recent years to the problem of detecting mean changes in a piecewise constant time series. Often, methods assume that the noise can be taken to be independent, identically distributed (IID), which in practice may not be a reasonable assumption. There is comparatively little work studying the problem of mean changepoint detection in time series with nontrivial autocovariance structure. In this article, we propose a likelihood-based method using wavelets to detect changes in mean in time series that exhibit time-varying autocovariance. Our proposed technique is shown to work well for time series with a variety of error structures via a simulation study, and we demonstrate its effectiveness on two data examples arising in economics.

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Accepted/In Press date: 16 December 2020
e-pub ahead of print date: 15 January 2021
Published date: 29 March 2021

Identifiers

Local EPrints ID: 477937
URI: http://eprints.soton.ac.uk/id/eprint/477937
ISSN: 2049-1573
PURE UUID: fddd9e2a-0508-4a91-8458-ea3506d0ec3c
ORCID for Euan T. McGonigle: ORCID iD orcid.org/0000-0003-0902-0035

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Date deposited: 16 Jun 2023 16:46
Last modified: 17 Mar 2024 04:20

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Contributors

Author: Euan T. McGonigle ORCID iD
Author: Rebecca Killick
Author: Matthew A. Nunes

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