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Growth-Optimal Portfolio Selection under CVaR Constraints

机译:CVAR限制下的增长 - 最佳产品组合选择

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Online portfolio selection research has so far focused mainly on minimizing regret defined in terms of wealth growth. Practical financial decision making, however, is deeply concerned with both wealth and risk. We consider online learning of portfolios of stocks whose prices are governed by arbitrary (unknown) stationary and ergodic processes, where the goal is to maximize wealth while keeping the conditional value at risk (CVaR) below a desired threshold. We characterize the asymptomatically optimal risk-adjusted performance and present an investment strategy whose portfolios are guaranteed to achieve the asymptotic optimal solution while fulfilling the desired risk constraint. We also numerically demonstrate and validate the viability of our method on standard datasets.
机译:到目前为止在线投资组合选择研究主要集中在最大限度地减少财富增长方面遗憾的遗憾。然而,实际的财务决策深受财富和风险深感关切。我们考虑在线学习价格的价格受到任意(未知)静止和ergodic过程的管辖,目标是最大限度地提高财富,同时将条件值(CVAR)保持在所需阈值以下。我们的特征在于渐近最佳的风险调整的性能,并提出了一种投资策略,其投资策略保证实现渐近最佳解决方案,同时满足所需的风险约束。我们还在数值上展示并验证了我们对标准数据集的方法的可行性。

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