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Mean-semivariance portfolio optimization with multiobjective evolutionary algorithms and technical analysis rules

机译:多目标进化算法和技术分析规则的均值-半方差投资组合优化

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Recent work has been devoted to study the use of multiobjective evolutionary algorithms (MOEAs) in stock portfolio optimization, within a common mean-variance framework. This article proposes the use of a more appropriate framework, mean-semivariance framework, which takes into account only adverse return variations instead of overall variations. It also proposes the use and comparison of established technical analysis (TA) indicators in pursuing better outcomes within the risk-return relation. Results show there is some difference in the performance of the two selected MOEAs non-dominated sorting genetic algorithm II (NSGA II) and strength pareto evolutionary algorithm 2 (SPEA 2) - within portfolio optimization. In addition, when used with four TA based strategies relative strength index (RSI), moving average convergence/divergence (MACD), contrarian bollinger bands (CBB) and bollinger bands (BB), the two selected MOEAs achieve solutions with interesting in-sample and out-of-sample outcomes for the BB strategy. (C) 2017 Elsevier Ltd. All rights reserved.
机译:最近的工作致力于研究在共同均值-方差框架内在股票投资组合优化中使用多目标进化算法(MOEA)。本文建议使用更合适的框架,均值-半方差框架,该框架仅考虑不利的收益变化而不是总体变化。它还建议使用和比较已建立的技术分析(TA)指标,以在风险-回报关系内追求更好的结果。结果表明,在投资组合优化中,两个选定的MOEA非支配排序遗传算法II(NSGA II)和强度对等进化算法2(SPEA 2)的性能存在差异。此外,当与四种基于TA的策略相对强度指数(RSI),移动平均收敛/发散(MACD),逆向波林格带(CBB)和波林格带(BB)一起使用时,两个选定的MOEA可以实现有趣的样本内解决方案以及BB策略的样本外结果。 (C)2017 Elsevier Ltd.保留所有权利。

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