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RACORN-K: Risk-Aversion Pattern Matching-based Portfolio Selection

机译:RACORN-K:基于风险规避模式匹配的投资组合选择

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Portfolio selection is the central task for assets management, but it turns out to be very challenging. Methods based on pattern matching, particularly the CORN-K algorithm, have achieved promising performance on several stock markets. A key shortage of the existing pattern matching methods, however, is that the risk is largely ignored when optimizing portfolios, which may lead to unreliable profits, particularly in volatile markets. We present a risk-aversion CORN-K algorithm, RACORN-K, that penalizes risk when searching for optimal portfolios. Experiments on four datasets (DJIA, MSCI, SP500(N), HSI) demonstrate that the new algorithm can deliver notable and reliable improvements in terms of return, Sharp ratio and maximum drawdown, especially on volatile markets.
机译:资产组合的选择是资产管理的中心任务,但事实证明这是非常具有挑战性的。基于模式匹配的方法,特别是CORN-K算法,在几个股票市场上都取得了可喜的表现。但是,现有模式匹配方法的一个关键不足是,在优化投资组合时,这种风险在很大程度上被忽略了,这可能导致不可靠的利润,尤其是在动荡的市场中。我们提出了一种风险规避CORN-K算法RACORN-K,该算法在搜索最佳投资组合时会惩罚风险。在四个数据集(DJIA,MSCI,SP500(N),HSI)上进行的实验表明,该新算法可以在回报率,夏普比率和最大跌幅方面提供显着且可靠的改进,尤其是在波动的市场上。

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