Bayesian Multivariate Quantile Regression with alternative Time-varying Volatility Specifications

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Date

29 novembre 2022

Type de document
Périmètre
Identifiant
  • 2211.16121
Collection

arXiv

Organisation

Cornell University



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Matteo Iacopini et al., « Bayesian Multivariate Quantile Regression with alternative Time-varying Volatility Specifications », arXiv - économie


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This article proposes a novel Bayesian multivariate quantile regression to forecast the tail behavior of US macro and financial indicators, where the homoskedasticity assumption is relaxed to allow for time-varying volatility. In particular, we exploit the mixture representation of the multivariate asymmetric Laplace likelihood and the Cholesky-type decomposition of the scale matrix to introduce stochastic volatility and GARCH processes, and we provide an efficient MCMC to estimate them. The proposed models outperform the homoskedastic benchmark mainly when predicting the distribution's tails. We provide a model combination using a quantile score-based weighting scheme, which leads to improved performances, notably when no single model uniformly outperforms the other across quantiles, time, or variables.

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