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A general approach to Bayesian portfolio optimization
Authors:Alexander Bade  Gabriel Frahm  Uwe Jaekel
Institution:(3) Dept. Accounting and Finance The London School of Economics and Political Sci., London, WC2A 2AE, UK;(4) Accounting and Finance Division The School of Management The Univ. Southampton, Southampton, SO17 1BJ, UK;(5) Management Sci. Division Fac. Commerce and Business Admin. Univ. British Columbia, 2053 Main Hall, Vancouver, B.C., Canada, V6T 1Z2
Abstract:We develop a general approach to portfolio optimization taking account of estimation risk and stylized facts of empirical finance. This is done within a Bayesian framework. The approximation of the posterior distribution of the unknown model parameters is based on a parallel tempering algorithm. The portfolio optimization is done using the first two moments of the predictive discrete asset return distribution. For illustration purposes we apply our method to empirical stock market data where daily asset log-returns are assumed to follow an orthogonal MGARCH process with t-distributed perturbations. Our results are compared with other portfolios suggested by popular optimization strategies.
Keywords:
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