Title :
Random Matrix Derived Shrinkage of Spectral Precision Matrices
Author :
Walden, A.T. ; Schneider-Luftman, D.
Author_Institution :
Dept. of Math., Imperial Coll. London, London, UK
Abstract :
There has been much research on shrinkage methods for real-valued covariance matrices and their inverses (precision matrices). In spectral analysis of p-vector-valued time series, complex-valued spectral matrices and precision matrices arise, and good shrinkage methods are often required, most notably when the estimated complex-valued spectral matrix is singular. As an improvement on the Ledoit-Wolf (LW) type of spectral matrix estimator we use random matrix theory to derive a Rao-Blackwell estimator for a spectral matrix, its inverse being a Rao-Blackwellized estimator for the spectral precision matrix. A random matrix method has previously been proposed for complex-valued precision matrices. It was implemented by very costly simulations. We formulate a fast, completely analytic approach. Moreover, we derive a way of selecting an important parameter using predictive risk methodology. We show that both the Rao-Blackwell estimator and the random matrix estimator of the precision matrix can substantially outperform the inverse of the LW estimator in a time series setting. Our new methodology is applied to EEG-derived time series data where it is seen to work well and deliver substantial improvements for precision matrix estimation.
Keywords :
matrix algebra; EEG-derived time series data; LW type; Ledoit-Wolf type; Rao-Blackwell estimator; complex valued spectral matrices; estimated complex valued spectral matrix; inverses precision matrices; precision matrices; random matrix derived shrinkage; random matrix estimator; random matrix theory; real-valued covariance matrices; shrinkage methods; spectral matrix estimator; spectral precision matrices; Bandwidth; Brain modeling; Context; Covariance matrices; Eigenvalues and eigenfunctions; Estimation; Time series analysis; Random matrix theory; Rao-Blackwell estimators; shrinkage; spectral matrix;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2015.2443726