Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Change point detection and inference in multivariable nonparametric models under mixing conditions

About

This paper studies multivariate nonparametric change point localization and inference problems. The data consists of a multivariate time series with potentially short range dependence. The distribution of this data is assumed to be piecewise constant with densities in a H\"{o}lder class. The change points, or times at which the distribution changes, are unknown. We derive the limiting distributions of the change point estimators when the minimal jump size vanishes or remains constant, a first in the literature on change point settings. We are introducing two new features: a consistent estimator that can detect when a change is happening in data with short-term dependence, and a consistent block-type long-run variance estimator. Numerical evidence is provided to back up our theoretical results.

Carlos Misael Madrid Padilla, Haotian Xu, Daren Wang, Oscar Hernan Madrid Padilla, Yi Yu• 2023

Related benchmarks

TaskDatasetResultRank
Change point localizationScenario 3
Error Proportion (K_hat != K)74
20
Change point localizationScenario 4
Failure Proportion5.5
20
Change point localizationScenario 5
Mismatch Proportion (K!=K)0.08
20
Change point localizationScenario 2
Proportion K̂ ≠ K59
20
Change point localizationScenario 1 T=300
Prop. K_hat != K10.5
10
Change point localizationScenario 1 T=150
Error Proportion2.5
10
Showing 6 of 6 rows

Other info

Follow for update