期刊
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
卷 107, 期 498, 页码 592-606出版社
AMER STATISTICAL ASSOC
DOI: 10.1080/01621459.2012.682825
关键词
Mean-variance efficiency; Portfolio improvement; Portfolio optimization; Risk assessment; Risk optimization; Short-sale constraint
资金
- NSF [DMS-070433]
- National Institute of General Medical Sciences of NIH [R01-GM072611]
This article introduces the large portfolio selection using gross-exposure constraints. It shows that with gross-exposure constraints, the empirically selected optimal portfolios based on estimated covariance matrices have similar performance to the theoretical optimal ones and there is no error accumulation effect from estimation of vast covariance matrices. This gives theoretical justification to the empirical results by Jagannathan and Ma. It also shows that the no-short-sale portfolio can be improved by allowing some short positions. The applications to portfolio selection, tracking, and improvements are also addressed. The utility of our new approach is illustrated by simulation and empirical studies on the 100 Fama-French industrial portfolios and the 600 stocks randomly selected from Russell 3000.
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