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

Optimal nonparametric multivariate change point detection and localization

About

We study the multivariate nonparametric change point detection problem, where the data are a sequence of independent $p$-dimensional random vectors whose distributions are piecewise-constant with Lipschitz densities changing at unknown times, called change points. We quantify the size of the distributional change at any change point with the supremum norm of the difference between the corresponding densities. We are concerned with the localization task of estimating the positions of the change points. In our analysis, we allow for the model parameters to vary with the total number of time points, including the minimal spacing between consecutive change points and the magnitude of the smallest distributional change. We provide information-theoretic lower bounds on both the localization rate and the minimal signal-to-noise ratio required to guarantee consistent localization. We formulate a novel algorithm based on kernel density estimation that nearly achieves the minimax lower bound, save possibly for logarithm factors. We have provided extensive numerical evidence to support our theoretical findings.

Oscar Hernan Madrid Padilla, Yi Yu, Daren Wang, Alessandro Rinaldo• 2019

Related benchmarks

TaskDatasetResultRank
Change point localizationScenario 5
Mismatch Proportion (K!=K)0.09
20
Change point localizationScenario 3
Error Proportion (K_hat != K)75
20
Change point localizationScenario 2
Proportion K̂ ≠ K51.5
20
Change point localizationScenario 4
Failure Proportion14.5
20
Change point localizationScenario 1 T=150
Error Proportion17
10
Change point localizationScenario 1 T=300
Prop. K_hat != K25.5
10
Showing 6 of 6 rows

Other info

Follow for update