Paper ID: 2408.14073

Score-based change point detection via tracking the best of infinitely many experts

Anna Markovich, Nikita Puchkin

We suggest a novel algorithm for online change point detection based on sequential score function estimation and tracking the best expert approach. The core of the procedure is a version of the fixed share forecaster for the case of infinite number of experts and quadratic loss functions. The algorithm shows a promising performance in numerical experiments on artificial and real-world data sets. We also derive new upper bounds on the dynamic regret of the fixed share forecaster with varying parameter, which are of independent interest.

Submitted: Aug 26, 2024