多元光谱投资组合:一种非监督学习的多元化方法

Francisco A. Ibanez
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引用次数: 0

摘要

如何使投资组合多样化的问题有很多可能的答案。在过去的几年里,行业和学术文献已经将焦点从资产驱动的答案转移到因素驱动的答案,这引发了人们对使用通过无监督学习识别的隐含因素的特殊兴趣。但是,在多样化的背景下,围绕这些方法的稳定性和执行的问题在什么是学术实践和什么是可执行的方法之间留下了差距。本文旨在通过提出一种以多元化为重点的投资组合构建方法来填补这一空白,该方法利用奇异值分解来识别隐含因素,并使用分层聚集聚类来解决围绕其实现的一些挑战。在样本外蒙特卡罗模拟中,该方法可以提供比其他常用的投资组合分散方法更好的风险调整绩效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diversified Spectral Portfolios: An Unsupervised Learning Approach to Diversification
The question of how to diversify an investment portfolio is one with many possible answers. Over the past couple of years, the industry and academic literature have been shifting focus from an asset-driven answer to a factor-driven one, sparking special interest in the use of implicit factors identified through unsupervised learning. However, issues around the stability and implementation of these, in the context of diversification, have left a gap between what is an academic exercise and what is an implementable methodology. This article aims to fill this gap by presenting a diversification-focused portfolio construction methodology that takes advantage of singular value decomposition to identify implicit factors and uses hierarchical agglomerative clustering to address some of the challenges surrounding its implementation. In out-of-sample Monte Carlo simulations, this methodology can provide better risk-adjusted performance than other commonly used portfolio diversification approaches.
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