文件夹
图形模型
Lasso(编程语言)
因子分析
计算机科学
协方差矩阵
背景(考古学)
投资组合优化
协方差
计量经济学
秩(图论)
反向
数学优化
数学
算法
统计
经济
机器学习
财务
组合数学
古生物学
万维网
生物
几何学
作者
Tae‐Hwy Lee,Ekaterina Seregina
标识
DOI:10.1093/jjfinec/nbad011
摘要
Abstract Graphical models are a powerful tool to estimate a high-dimensional inverse covariance (precision) matrix, which has been applied for a portfolio allocation problem. The assumption made by these models is a sparsity of the precision matrix. However, when stock returns are driven by common factors, such assumption does not hold. We address this limitation and develop a framework, Factor Graphical Lasso (FGL), which integrates graphical models with the factor structure in the context of portfolio allocation by decomposing a precision matrix into low-rank and sparse components. Our theoretical results and simulations show that FGL consistently estimates the portfolio weights and risk exposure and also that FGL is robust to heavy-tailed distributions which makes our method suitable for financial applications. FGL-based portfolios are shown to exhibit superior performance over several prominent competitors including equal-weighted and index portfolios in the empirical application for the S&P500 constituents.
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