On sparsity of eigenportfolios to reduce transaction cost

Anqi Xiong, A. Akansu
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引用次数: 1

Abstract

Purpose Transaction cost becomes significant when one holds many securities in a large portfolio where capital allocations are frequently rebalanced due to variations in non-stationary statistical characteristics of the asset returns. The purpose of this paper is to employ a sparsing method to sparse the eigenportfolios, so that the transaction cost can be reduced and without any loss of its performance. Design/methodology/approach In this paper, the authors have designed pdf-optimized mid-tread Lloyd-Max quantizers based on the distribution of each eigenportfolio, and then employed them to sparse the eigenportfolios, so those small size orders may usually be ignored (sparsed), as the result, the trading costs have been reduced. Findings The authors find that the sparsing technique addressed in this paper is methodic, easy to implement for large size portfolios and it offers significant reduction in transaction cost without any loss of performance. Originality/value In this paper, the authors investigated the performance the sparsed eigenportfolios of stock returns in S&P500 Index. It is shown that the sparsing method is simple to implement and it provides high levels of sparsity without causing PNL loss. Therefore, transaction cost of managing a large size portfolio is reduced by employing such an efficient sparsity method.
特征组合的稀疏性降低交易成本
当一个人在一个大型投资组合中持有许多证券时,由于资产回报的非平稳统计特征的变化,资本配置经常被重新平衡,交易成本变得重要。本文的目的是利用稀疏方法对特征组合进行稀疏处理,从而在不损失交易成本的前提下降低交易成本。设计/方法/方法在本文中,作者根据每个特征组合的分布设计了pdf优化的中阶劳埃德-马克斯量化器,然后利用它们对特征组合进行稀疏处理,使得那些通常可以忽略(稀疏)的小订单,从而降低了交易成本。研究结果作者发现,本文中提到的稀疏技术是有条理的,易于实现大型投资组合,并且在没有任何性能损失的情况下显著降低了交易成本。本文研究了标准普尔500指数中稀疏特征组合的股票收益表现。结果表明,该方法易于实现,并且在不造成PNL损失的情况下提供了高水平的稀疏性。因此,采用这种高效的稀疏性方法可以降低管理大型投资组合的交易成本。
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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