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A structured variational learning approach for switching latent factor models
Authors:Mohamed Saidane  Christian Lavergne
Institution:(1) Institut de Mathématiques et de Modélisation de Montpellier, Université Montpellier II, Place Eugène Bataillon CC, 051, 34095 Montpellier, France;(2) Département Mathématiques et Informatique Appliqués, Université Paul-Valéry Montpellier III, Route de Mende, 34199 Montpellier Cedex 5, France
Abstract:A data-driven approach for modeling volatility dynamics and co-movements in financial markets is introduced. Special emphasis is given to multivariate conditionally heteroscedastic factor models in which the volatilities of the latent factors depend on their past values, and the parameters are driven by regime switching in a latent state variable. We propose an innovative indirect estimation method based on the generalized EM algorithm principle combined with a structured variational approach that can handle models with large cross-sectional dimensions. Extensive Monte Carlo simulations and preliminary experiments with financial data show promising results.
Keywords:Factor models  HMM  Conditional heteroscedasticity  EM algorithm  Variational approximation
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