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Risk-Aversion Adjusted Portfolio Optimization with Predictive Modeling

机译:带有预测模型的风险规避调整后的投资组合优化

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We propose a multi-period portfolio optimization method rooted on the mean-risk framework, in which the risk-aversion coefficient is adjusted in response to the market trend movement predicted by machine learning models. We use the Gini's Mean Difference to characterize the risk of the portfolio, and employ a series of technical indicators as the features to feed the predictive machine learning models. A set of comprehensive computational tests are carried out within a rolling-horizon approach to evaluate the performance of the generated portfolios. The empirical results show that the regularized logistic regression model provides the best prediction of market trend movement, while the proposed dynamic risk-aversion adjusted portfolio rebalancing strategy generates portfolios with higher time-series cumulative returns than a static strategy with fixed risk-aversion coefficient.
机译:我们提出了一种基于均值风险框架的多期投资组合优化方法,其中,根据机器学习模型预测的市场趋势变化来调整风险规避系数。我们使用基尼的均值差来描述投资组合的风险,并采用一系列技术指标作为预测性机器学习模型的特征。在滚动水平方法中进行了一组全面的计算测试,以评估生成的投资组合的绩效。实证结果表明,正规化的逻辑回归模型可以提供最佳的市场趋势预测,而动态风险规避调整后的投资组合再平衡策略所生成的投资组合,其时间序列累积收益要高于固定风险厌恶系数的静态策略。

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