An Evaluation of Change Point Detection Algorithms
Gerrit J.J. van den Burg, Christopher K.I. Williams

TL;DR
This paper emphasizes the importance of evaluating change point detection algorithms on real-world data, introducing a new annotated dataset and benchmarking 14 algorithms to improve understanding of their practical performance.
Contribution
It provides a new annotated dataset of 37 real-world time series and a comprehensive benchmark of 14 algorithms, addressing the gap in real-world evaluation.
Findings
Human annotator agreement analyzed
Evaluation metrics for multiple ground truths proposed
Benchmark results highlight algorithm performance variations
Abstract
Change point detection is an important part of time series analysis, as the presence of a change point indicates an abrupt and significant change in the data generating process. While many algorithms for change point detection have been proposed, comparatively little attention has been paid to evaluating their performance on real-world time series. Algorithms are typically evaluated on simulated data and a small number of commonly-used series with unreliable ground truth. Clearly this does not provide sufficient insight into the comparative performance of these algorithms. Therefore, instead of developing yet another change point detection method, we consider it vastly more important to properly evaluate existing algorithms on real-world data. To achieve this, we present a data set specifically designed for the evaluation of change point detection algorithms that consists of 37 time…
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Taxonomy
TopicsMental Health Research Topics · Behavioral Health and Interventions
