Portfolio selection with parsimonious higher comoments estimation

Mutual Funds Pub Date : 2021-03-14 DOI:10.2139/ssrn.3455400
Nathan Lassance, F. Vrins
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引用次数: 13

Abstract

Abstract Large investment universes are usually fatal to portfolio strategies optimizing higher moments because of computational and estimation issues resulting from the number of parameters involved. In this paper, we introduce a parsimonious method to estimate higher moments that consists of projecting asset returns onto a small set of maximally independent factors found via independent component analysis (ICA). In contrast to principal component analysis (PCA), we show that ICA resolves the curse of dimensionality affecting the comoment tensors of asset returns. The method is easy to implement, computationally efficient, and makes portfolio strategies optimizing higher moments appealing in large investment universes. Considering the value-at-risk as a risk measure, an investment universe of up to 500 stocks and adjusting for transaction costs, we show that our ICA approach leads to superior out-of-sample risk-adjusted performance compared with PCA, equally weighted, and minimum-variance portfolios.
具有精简高评论估计的投资组合选择
由于涉及的参数数量多而导致的计算和估计问题,大的投资空间通常对优化高矩的投资组合策略是致命的。在本文中,我们引入了一种简单的方法来估计更高的矩,该方法包括将资产回报投影到通过独立成分分析(ICA)发现的一组最大独立因素上。与主成分分析(PCA)相比,我们表明ICA解决了影响资产回报评论张量的维度诅咒。该方法易于实现,计算效率高,使优化高时刻的投资组合策略在大型投资领域具有吸引力。考虑到风险价值作为一种风险度量,最多500只股票的投资范围并调整交易成本,我们表明,与PCA、等权重和最小方差投资组合相比,我们的ICA方法导致了更好的样本外风险调整绩效。
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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