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首页> 外文期刊>Journal of Economic Dynamics and Control >Portfolio management with robustness in both prediction and decision: A mixture model based learning approach
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Portfolio management with robustness in both prediction and decision: A mixture model based learning approach

机译:既具有预测能力又具有鲁棒性的投资组合管理:基于混合模型的学习方法

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摘要

We develop in this paper a novel portfolio selection framework with a feature of double robustness in both return distribution modeling and portfolio optimization. While predicting the future return distributions always represents the most compelling challenge in investment, any underlying distribution can be always well approximated by utilizing a mixture distribution, if we are able to ensure that the component list of a mixture distribution includes all possible distributions corresponding to the scenario analysis of potential market modes. Adopting a mixture distribution enables us to (1) reduce the problem of distribution prediction to a parameter estimation problem in which the mixture weights of a mixture distribution are estimated under a Bayesian learning scheme and the corresponding credible regions of the mixture weights are obtained as well and (2) harmonize information from different channels, such as historical data, market implied information and investors' subjective views. We further formulate a robust mean-CVaR portfolio selection problem to deal with the inherent uncertainty in predicting the future return distributions. By employing the duality theory, we show that the robust portfolio selection problem via learning with a mixture model can be reformulated as a linear program or a second-order cone program, which can be effectively solved in polynomial time. We present the results of simulation analyses and primary empirical tests to illustrate a significance of the proposed approach and demonstrate its pros and cons.
机译:我们在本文中开发了一种新颖的投资组合选择框架,该框架在收益分配建模和投资组合优化方面均具有双重健壮性。尽管预测未来收益分配始终是投资中最引人注目的挑战,但只要我们能够确保混合分配的组成部分列表中包含与该收益对应的所有可能分配,就可以通过利用混合分配很好地近似任何潜在的分配。潜在市场模式的情景分析。采用混合分布使我们能够(1)将分布预测问题简化为参数估计问题,在该参数估计问题中,根据贝叶斯学习方案估计了混合分布的混合权重,并且还获得了混合权重的相应可信区域(2)协调来自不同渠道的信息,例如历史数据,市场隐含信息和投资者的主观看法。我们进一步制定了鲁棒的均值-CVaR投资组合选择问题,以处理预测未来收益分配时固有的不确定性。通过使用对偶理论,我们证明了通过混合模型学习而获得的鲁棒的投资组合选择问题可以重新构造为线性程序或二阶锥程序,可以在多项式时间内有效解决。我们介绍了仿真分析和主要的经验测试的结果,以说明所提出方法的重要性并证明其优缺点。

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