因子(编程语言)
计算机科学
文件夹
人工智能
投资组合优化
机器学习
经济
金融经济学
程序设计语言
作者
Thomas Conlon,John Cotter,Iason Kynigakis
出处
期刊:Social Science Research Network
[Social Science Electronic Publishing]
日期:2021-01-01
被引量:1
摘要
We examine machine learning and factor-based portfolio optimization. We find that factors based on autoencoder neural networks exhibit a weaker relationship with commonly used characteristic-sorted portfolios than popular dimensionality reduction techniques. Machine learning methods also lead to covariance and portfolio weight structures that diverge from simpler estimators. Minimum-variance portfolios using latent factors derived from autoencoders and sparse methods outperform simpler benchmarks in terms of risk minimization. These effects are amplified for investors with an increased sensitivity to risk-adjusted returns, during high volatility periods or when accounting for tail risk.
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