The Gibbs Posterior and Parametric Portfolio Choice
Christopher G. Lamoureux
Papers from arXiv.org
Abstract:
Parametric portfolio policies may experience estimation risk. I develop a generalized Bayesian framework that updates priors, delivering a posterior distribution over characteristic tilts and out-of-sample returns that is the unique belief-updating rule consistent with the investor's utility function, requiring no model for the return generating process. The Gibbs posterior is the closest distribution to the prior in Kullback-Leibler divergence subject to utility maximization. The posterior's scaling parameter $\lambda$ controls the weight placed on data relative to the prior. I develop a KNEEDLE algorithm to select optimal $\lambda^*$ in-sample by trading off posterior precision against numerical fragility, eliminating the need for out-of-sample validation. I apply this to U.S. equities (1955-2024), and confirm characteristic-based gains concentrate pre-2000. I find that $\lambda^*$ varies meaningfully with risk aversion and depends on higher-order moments.
Date: 2026-03, Revised 2026-03
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Persistent link: https://EconPapers.repec.org/RePEc:arx:papers:2603.02455
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