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Sequential break-point detection in stationary time series: an application to monitoring economic indicators

Sequential break-point detection in stationary time series: an application to monitoring economic indicators
Sequential break-point detection in stationary time series: an application to monitoring economic indicators
Monitoring economic conditions and financial stability with an early warning system serves as a prevention mechanism for unexpected economic events. In this paper, we investigate the statistical performance of sequential break-point detectors for stationary time series regression models with extensive simulation experiments. We employ an online sequential scheme for monitoring economic indicators from the European as well as the American financial markets that span the period during the 2008 financial crisis. Our results show that the performance of these tests applied to stationary time series regressions such as the AR(1) as well as the AR(1)-GARCH(1,1) depend on the severity of the break as well as the location of the break-point within the out-of-sample period. Consequently, our study provides some useful insights to practitioners for sequential break-point detection in economic and financial conditions.
stat.AP
Katsouris, Christis
c00ef5df-703d-4372-bfd4-a2df0d664f95
Katsouris, Christis
c00ef5df-703d-4372-bfd4-a2df0d664f95

[Unknown type: UNSPECIFIED]

Record type: UNSPECIFIED

Abstract

Monitoring economic conditions and financial stability with an early warning system serves as a prevention mechanism for unexpected economic events. In this paper, we investigate the statistical performance of sequential break-point detectors for stationary time series regression models with extensive simulation experiments. We employ an online sequential scheme for monitoring economic indicators from the European as well as the American financial markets that span the period during the 2008 financial crisis. Our results show that the performance of these tests applied to stationary time series regressions such as the AR(1) as well as the AR(1)-GARCH(1,1) depend on the severity of the break as well as the location of the break-point within the out-of-sample period. Consequently, our study provides some useful insights to practitioners for sequential break-point detection in economic and financial conditions.

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2112.06889v1 - Author's Original
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Published date: 13 December 2021
Keywords: stat.AP

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Local EPrints ID: 471740
URI: http://eprints.soton.ac.uk/id/eprint/471740
PURE UUID: 5e8f9f5b-8ceb-4c01-a09f-f8a5be95d328
ORCID for Christis Katsouris: ORCID iD orcid.org/0000-0002-8869-6641

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Date deposited: 17 Nov 2022 17:40
Last modified: 17 Mar 2024 03:49

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Author: Christis Katsouris ORCID iD

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