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A memetic algorithm for cardinality-constrained portfolio optimization with transaction costs

机译:具有交易成本的基数受限投资组合优化的模因算法

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A memetic approach that combines a genetic algorithm (GA) and quadratic programming is used to address the problem of optimal portfolio selection with cardinality constraints and piecewise linear transaction costs. The framework used is an extension of the standard Markowitz mean-variance model that incorporates realistic constraints, such as upper and lower bounds for investment in individual assets and/or groups of assets, and minimum trading restrictions. The inclusion of constraints that limit the number of assets in the final portfolio and piecewise linear transaction costs transforms the selection of optimal portfolios into a mixed-integer quadratic problem, which cannot be solved by standard optimization techniques. We propose to use a genetic algorithm in which the candidate portfolios are encoded using a set representation to handle the combinatorial aspect of the optimization problem. Besides specifying which assets are included in the portfolio, this representation includes attributes that encode the trading operation (sell/hold/buy) performed when the portfolio is rebalanced. The results of this hybrid method are benchmarked against a range of investment strategies (passive management, the equally weighted portfolio, the minimum variance portfolio, optimal portfolios without cardinality constraints, ignoring transaction costs or obtained with 1.1 regularization) using publicly available data. The transaction costs and the cardinality constraints provide regularization mechanisms that generally improve the out-of-sample performance of the selected portfolios. (C) 2015 Elsevier B.V. All rights reserved.
机译:结合遗传算法(GA)和二次规划的模因方法用于解决具有基数约束和分段线性交易成本的最优投资组合选择问题。所使用的框架是标准Markowitz平均方差模型的扩展,该模型合并了现实的约束条件,例如对单个资产和/或资产组的投资上限和下限,以及最低交易限制。包括限制最终投资组合中的资产数量和分段线性交易成本的约束条件,会将最优投资组合的选择转换为混合整数二次问题,这不能通过标准优化技术来解决。我们建议使用一种遗传算法,其中候选投资组合使用一组表示形式进行编码,以处理优化问题的组合方面。除了指定资产组合中包括哪些资产外,此表示还包括对资产组合重新平衡时执行的交易操作(出售/持有/购买)进行编码的属性。使用公开可用的数据,将该混合方法的结果与一系列投资策略(被动管理,权重相等的投资组合,最小方差投资组合,无基数约束的最优投资组合,忽略交易成本或通过1.1正则化获得)进行基准比较。交易成本和基数约束提供了正规化机制,通常可以提高所选投资组合的样本外绩效。 (C)2015 Elsevier B.V.保留所有权利。

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