Fast and Optimal Inference for Change Points in Piecewise Polynomials via Differencing

07/07/2023
by   Shakeel Gavioli-Akilagun, et al.
0

We consider the problem of uncertainty quantification in change point regressions, where the signal can be piecewise polynomial of arbitrary but fixed degree. That is we seek disjoint intervals which, uniformly at a given confidence level, must each contain a change point location. We propose a procedure based on performing local tests at a number of scales and locations on a sparse grid, which adapts to the choice of grid in the sense that by choosing a sparser grid one explicitly pays a lower price for multiple testing. The procedure is fast as its computational complexity is always of the order 𝒪 (n log (n)) where n is the length of the data, and optimal in the sense that under certain mild conditions every change point is detected with high probability and the widths of the intervals returned match the mini-max localisation rates for the associated change point problem up to log factors. A detailed simulation study shows our procedure is competitive against state of the art algorithms for similar problems. Our procedure is implemented in the R package ChangePointInference which is available via https://github.com/gaviosha/ChangePointInference.

READ FULL TEXT

page 29

page 31

research
06/23/2020

Seeded intervals and noise level estimation in change point detection: A discussion of Fryzlewicz (2020)

In this discussion, we compare the choice of seeded intervals and that o...
research
08/09/2022

Moving sum procedure for change point detection under piecewise linearity

We propose a computationally efficient, moving sum (MOSUM) procedure for...
research
09/06/2021

Robust Narrowest Significance Pursuit: inference for multiple change-points in the median

We propose Robust Narrowest Significance Pursuit (RNSP), a methodology f...
research
10/22/2020

Optimal Change-Point Detection and Localization

Given a times series Y in ℝ^n, with a piece-wise contant mean and indepe...
research
08/08/2023

Multiple Testing of Local Extrema for Detection of Structural Breaks in Piecewise Linear Models

In this paper, we propose a new generic method for detecting the number ...
research
06/09/2022

On Low-Complexity Quickest Intervention of Mutated Diffusion Processes Through Local Approximation

We consider the problem of controlling a mutated diffusion process with ...
research
01/28/2023

Combinatorial Inference on the Optimal Assortment in Multinomial Logit Models

Assortment optimization has received active explorations in the past few...

Please sign up or login with your details

Forgot password? Click here to reset