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Activity Number: 472 - Winners: Business and Economic Statistics Student Paper Awards
Type: Topic Contributed
Date/Time: Wednesday, August 10, 2022 : 2:00 PM to 3:50 PM
Sponsor: Business and Economic Statistics Section
Abstract #321037
Title: Decoupling Trends and Changepoint Analysis
Author(s): Haoxuan Wu* and Sean Ryan and David Matteson
Companies: Cornell University and Cornell University and Cornell University
Keywords: Structural Change; Stochastic Volatility; Dynamic Linear Models; Trend Filtering; Posterior Summary
Abstract:

This paper introduces a new Bayesian changepoint approach called the decoupled approach that separates the process of modeling and changepoint analysis. The approach utilizes a Bayesian dynamic linear model (DLM) for the modeling step and a weighted penalized likelihood estimator on the posterior of the Bayesian DLM to identify changepoints. A Bayesian DLM, with shrinkage priors, can provide smooth estimates of the underlying trend in presence of complex noise components; however, the inability to shrink exactly to zero make changepoint analysis difficult. The decoupled approach combines the flexibility of the Bayesian DLM along with the hard thresholding property of penalized likelihood estimator to extend application of changepoint analysis. The approach provides a robust framework that allows for identification of changepoints in highly complex Bayesian models. The approach can identify changes in mean, higher order trends and regression coefficients. We illustrate the approach's flexibility and robustness by comparing against several alternative methods in a wide range of simulations and two real world examples.


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