Reliable estimates of volatility and correlation are fundamental in economics and finance for understanding the impact of macroeconomics events on the market and guiding future investments and policies. Dependence across financial returns is likely to be subject to sudden structural changes, especially in correspondence with major global events, such as the COVID-19 pandemic. In this work we are interested in capturing abrupt changes over time in the conditional dependence across U.S. industry stock portfolios, over a time horizon that covers the COVID-19 pandemic. The selected stocks give a comprehensive picture of the U.S. stock market. To this end, we develop a Bayesian multivariate stochastic volatility model based on a time-varying sequence of graphs capturing the evolution of the dependence structure. The model builds on the Gaussian graphical models and the random change points literature. In particular, we treat the number, the position of change points, and the graphs as object of posterior inference, allowing for sparsity in graph recovery and change point detection. The high dimension of the parameter space poses complex computational challenges. However, the model admits a hidden Markov model formulation. This leads to the development of an efficient computational strategy, based on a combination of sequential Monte-Carlo and Markov chain Monte-Carlo techniques. Model and computational development are widely applicable, beyond the scope of the application of interest in this work.Food, Tobacco, Textiles, Apparel, Leather, Toys Cars, TVs, Furniture, Household Appliances Machinery, Trucks, Planes, Chemicals, Off Furn, Paper Oil, Gas, and Coal Extraction and Products Computers, Software, and Electronic Equipment Telephone and Television Transmission Wholesale, Retail, and Some Services Healthcare, Medical Equipment, and Drugs Utilities.

Franzolini, B., Beskos, A., De Iorio, M., Poklewski Koziell, W., Grzeszkiewicz, K. (2024). Change point detection in dynamic Gaussian graphical models: the impact of COVID-19 pandemic on the U.S. stock market. THE ANNALS OF APPLIED STATISTICS, 18(1), 555-584 [10.1214/23-AOAS1801].

Change point detection in dynamic Gaussian graphical models: the impact of COVID-19 pandemic on the U.S. stock market

Franzolini, Beatrice;
2024

Abstract

Reliable estimates of volatility and correlation are fundamental in economics and finance for understanding the impact of macroeconomics events on the market and guiding future investments and policies. Dependence across financial returns is likely to be subject to sudden structural changes, especially in correspondence with major global events, such as the COVID-19 pandemic. In this work we are interested in capturing abrupt changes over time in the conditional dependence across U.S. industry stock portfolios, over a time horizon that covers the COVID-19 pandemic. The selected stocks give a comprehensive picture of the U.S. stock market. To this end, we develop a Bayesian multivariate stochastic volatility model based on a time-varying sequence of graphs capturing the evolution of the dependence structure. The model builds on the Gaussian graphical models and the random change points literature. In particular, we treat the number, the position of change points, and the graphs as object of posterior inference, allowing for sparsity in graph recovery and change point detection. The high dimension of the parameter space poses complex computational challenges. However, the model admits a hidden Markov model formulation. This leads to the development of an efficient computational strategy, based on a combination of sequential Monte-Carlo and Markov chain Monte-Carlo techniques. Model and computational development are widely applicable, beyond the scope of the application of interest in this work.Food, Tobacco, Textiles, Apparel, Leather, Toys Cars, TVs, Furniture, Household Appliances Machinery, Trucks, Planes, Chemicals, Off Furn, Paper Oil, Gas, and Coal Extraction and Products Computers, Software, and Electronic Equipment Telephone and Television Transmission Wholesale, Retail, and Some Services Healthcare, Medical Equipment, and Drugs Utilities.
Articolo in rivista - Articolo scientifico
Coronavirus pandemic; graphical models; industry portoflios; particle filter; precision matrix; stochastic volatility;
English
31-gen-2024
2024
18
1
555
584
reserved
Franzolini, B., Beskos, A., De Iorio, M., Poklewski Koziell, W., Grzeszkiewicz, K. (2024). Change point detection in dynamic Gaussian graphical models: the impact of COVID-19 pandemic on the U.S. stock market. THE ANNALS OF APPLIED STATISTICS, 18(1), 555-584 [10.1214/23-AOAS1801].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/581921
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