An outlier robust hierarchical Bayes model for forecasting: the case of Hong Kong

An outlier robust hierarchical Bayes model for forecasting: the case of Hong Kong

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Article ID: iaor20073898
Country: United Kingdom
Volume: 23
Issue: 2
Start Page Number: 99
End Page Number: 114
Publication Date: Mar 2004
Journal: International Journal of Forecasting
Authors:
Keywords: financial, markov processes, simulation: applications
Abstract:

This paper introduces a Bayesian forecasting model that accommodates innovative outliers. The hierarchical specification of prior distributions allows an identification of observations contaminated by these outliers and endogenously determines the hyperparameters of the Minnesota prior. Estimation and prediction are performed using Markov chain Monte Carlo (MCMC) methods. The model forecasts the Hong Kong economy more accurately than the standard V AR and performs in line with other complicated BV AR models. It is also shown that the model is capable of finding most of the outliers in various simulation experiments.

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