The smoothing distribution of dynamic probit models with Gaussian state dynamics was recently proved to belong to the unified skew-normal family. Although this is computationally tractable in small-to-moderate settings, it may become computationally impractical in higher dimensions. In this work, adapting a recent more general class of expectation propagation (ep) algorithms, we derive an efficient ep routine to perform inference for such a distribution. We show that the proposed approximation leads to accuracy gains over available approximate algorithms in a financial illustration.

Expectation propagation for the smoothing distribution in dynamic probit

Augusto Fasano;Giovanni Rebaudo
2023-01-01

Abstract

The smoothing distribution of dynamic probit models with Gaussian state dynamics was recently proved to belong to the unified skew-normal family. Although this is computationally tractable in small-to-moderate settings, it may become computationally impractical in higher dimensions. In this work, adapting a recent more general class of expectation propagation (ep) algorithms, we derive an efficient ep routine to perform inference for such a distribution. We show that the proposed approximation leads to accuracy gains over available approximate algorithms in a financial illustration.
2023
Bayesian Statistics, New Generations New Approaches
Springer
435
105
115
9783031424137
9783031424120
9783031424151
Dynamic probit model, State-space model, Expectation propagation, Unified skew-normal distribution, Smoothing
Niccolò Anceschi, Augusto Fasano, Giovanni Rebaudo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1929770
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