| Literature DB >> 24348088 |
Jianqing Fan1, Yuan Liao2, Martina Mincheva3.
Abstract
This paper deals with the estimation of a high-dimensional covariance with a conditional sparsity structure and fast-diverging eigenvalues. By assuming sparse error covariance matrix in an approximate factor model, we allow for the presence of some cross-sectional correlation even after taking out common but unobservable factors. We introduce the Principal Orthogonal complEment Thresholding (POET) method to explore such an approximate factor structure with sparsity. The POET estimator includes the sample covariance matrix, the factor-based covariance matrix (Fan, Fan, and Lv, 2008), the thresholding estimator (Bickel and Levina, 2008) and the adaptive thresholding estimator (Cai and Liu, 2011) as specific examples. We provide mathematical insights when the factor analysis is approximately the same as the principal component analysis for high-dimensional data. The rates of convergence of the sparse residual covariance matrix and the conditional sparse covariance matrix are studied under various norms. It is shown that the impact of estimating the unknown factors vanishes as the dimensionality increases. The uniform rates of convergence for the unobserved factors and their factor loadings are derived. The asymptotic results are also verified by extensive simulation studies. Finally, a real data application on portfolio allocation is presented.Entities:
Keywords: High-dimensionality; approximate factor model; cross-sectional correlation; diverging eigenvalues; low-rank matrix; principal components; sparse matrix; thresholding; unknown factors
Year: 2013 PMID: 24348088 PMCID: PMC3859166 DOI: 10.1111/rssb.12016
Source DB: PubMed Journal: J R Stat Soc Series B Stat Methodol ISSN: 1369-7412 Impact factor: 4.488