Change-point Detection for Sparse and Dense Functional Data in General Dimensions

We study the problem of change-point detection and localisation for functional data sequentially observed on a general d-dimensional space, where we allow the functional curves to be either sparsely or densely sampled. Data of this form naturally arise in a wide range of applications such as biology, neuroscience, climatology, and finance. To achieve such a task, we propose a kernel-based algorithm named functional seeded binary segmentation (FSBS). FSBS is computationally efficient, can handle discretely observed functional data, and is theoretically sound for heavy-tailed and temporally-dependent observations. Moreover, FSBS works for a general d-dimensional domain, which is the first in the literature of change-point estimation for functional data. We show the consistency of FSBS for multiple change-point estimations and further provide a sharp localisation error rate, which reveals an interesting phase transition phenomenon depending on the number of functional curves observed and the sampling frequency for each curve. Extensive numerical experiments illustrate the effectiveness of FSBS and its advantage over existing methods in the literature under various settings. A real data application is further conducted, where FSBS localises change-points of sea surface temperature patterns in the south Pacific attributed to El Nino.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/21/2021

Adversarially Robust Change Point Detection

Change point detection is becoming increasingly popular in many applicat...
research
07/22/2019

A novel regularized approach for functional data clustering: An application to milking kinetics in dairy goats

Motivated by an application to the clustering of milking kinetics of dai...
research
12/31/2019

Consistency of Binary Segmentation For Multiple Change-Points Estimation With Functional Data

For sequentially observed functional data exhibiting multiple change poi...
research
01/29/2018

Uncertainty Estimation in Functional Linear Models

Functional data analysis is proved to be useful in many scientific appli...
research
05/30/2023

Robust mean change point testing in high-dimensional data with heavy tails

We study a mean change point testing problem for high-dimensional data, ...
research
03/20/2015

Block-Wise MAP Inference for Determinantal Point Processes with Application to Change-Point Detection

Existing MAP inference algorithms for determinantal point processes (DPP...
research
06/28/2023

Adaptive functional principal components analysis

Functional data analysis (FDA) almost always involves smoothing discrete...

Please sign up or login with your details

Forgot password? Click here to reset