Pareto-archived evolutionary wavelet network for financial constrained portfolio optimization

N. C. Suganya, G. Pai
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引用次数: 7

Abstract

The multi-objective portfolio optimization problem is too complex to find direct solutions by traditional methods when constraints reflecting investor's preferences and-or market frictions are included in the mathematical model and hence heuristic approaches are sought for their solution. In this paper we propose the solution of a multi-criterion (bi-objective) portfolio optimization problem of minimizing risk and maximizing expected return of the portfolio which includes basic, bounding, cardinality, class and short sales constraints using a Pareto-archived evolutionary wavelet network (PEWN) solution strategy. Initially, the empirical covariance matrix is denoised by employing a wavelet shrinkage denoising technique. Second, the cardinality constraint is eliminated by the application of k-means cluster analysis. Finally, a PEWN heuristic strategy with weight standardization procedures is employed to obtain Pareto-optimal solutions satisfying all the constraints. The closeness and diversity of Pareto-optimal solutions obtained using PEWN is evaluated using different measures and the results are compared with existing only solution strategies (evolution-based wavelet Hopfield neural network and evolution-based Hopfield neural network) to prove its dominance. Eventually, data envelopment analysis is also used to test the efficiency of the non-dominated solutions obtained using PEWN. Experimental results are demonstrated on the Bombay Stock Exchange, India (BSE200 index: period July 2001–July 2006), and the Tokyo Stock Exchange, Japan (Nikkei225 index: period March 2002–March 2007), data sets. Copyright © 2010 John Wiley & Sons, Ltd.
pareto存档演化小波网络在财务约束投资组合优化中的应用
当数学模型中包含反映投资者偏好的约束条件和市场摩擦时,多目标投资组合优化问题由于过于复杂而无法用传统方法直接求解,因此需要寻求启发式方法求解。本文提出了一个包含基本约束、边界约束、基数约束、类约束和卖空约束的投资组合风险最小化和期望收益最大化的多准则(双目标)投资组合优化问题的pareto存档进化小波网络(PEWN)求解策略。首先,采用小波收缩去噪技术对经验协方差矩阵进行去噪。其次,通过k-means聚类分析消除了基数约束。最后,采用带权重标准化过程的PEWN启发式策略,求出满足所有约束条件的pareto最优解。采用不同的度量方法对PEWN算法得到的pareto最优解的接近性和多样性进行了评价,并将结果与现有的单解策略(基于进化的小波Hopfield神经网络和基于进化的Hopfield神经网络)进行了比较,证明了其优势性。最后,利用数据包络分析对PEWN得到的非支配解的效率进行了检验。实验结果在印度孟买证券交易所(BSE200指数:2001年7月- 2006年7月)和日本东京证券交易所(日经225指数:2002年3月- 2007年3月)的数据集上进行了验证。版权所有©2010 John Wiley & Sons, Ltd
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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