Selective linear segmentation for detecting relevant parameter changes
Abstract
Change-point processes are one flexible approach to model long time series. We propose a method to uncover which model parameter truly vary when a change-point is detected. Given a set of breakpoints, we use a penalized likelihood approach to select the best set of parameters that changes over time and we prove that the penalty function leads to a consistent selection of the true model. Estimation is carried out via the deterministic annealing expectation-maximization algorithm. Our method accounts for model selection uncertainty and associates a probability to all the possible time-varying parameter specifications. Monte Carlo simulations highlight that the method works well for many time series models including heteroskedastic processes. For a sample of 14 Hedge funds (HF) strategies, using an asset based style pricing model, we shed light on the promising ability of our method to detect the time-varying dynamics of risk exposures as well as to forecast HF returns.
Keywords
Cite
@article{arxiv.2402.05329,
title = {Selective linear segmentation for detecting relevant parameter changes},
author = {Arnaud Dufays and Aristide Houndetoungan and Alain Coën},
journal= {arXiv preprint arXiv:2402.05329},
year = {2024}
}