Author_Institution :
Dept. of Autom., Tsinghua Univ., Beijing, China
Abstract :
StOMP is well suited to large-scale systems in sparse vector estimation. It can reduce computation complexity without significant deterioration of estimation accuracy, and has some attractive asymptotically statistical properties. However, the speed of vector estimation is at the cost of accuracy violation. In this paper, an improvement on StOMP is suggested. Firstly, during one stage of the algorithm, according to the mixed probability distribution of coefficients of a matched filter, distribution parameters are estimated more accurately using an outlier deletion method. This estimate also leads to an estimate on the support set of the sparse vector. Secondly, an initial estimate is obtained through least-squares method for sparse vector. Thirdly, a more accurate estimate of the support set is achieved on the basis of an estimated True Positive Rate (TPR), which results in a significant False Positive Rate (FPR) reduction. Finally, after solving a least-squares problem, an estimation residual is produced. This improved algorithm can not only more accurately estimate the parameters of distribution of matched filter coefficients, but also improve estimation accuracy for the sparse vector. Simulation results show that without significant increment in computation complexity, the proposed algorithm can greatly improve estimation accuracy for sparse solution problems.
Keywords :
computational complexity; least squares approximations; matched filters; parameter estimation; sparse matrices; statistical distributions; vectors; FPR reduction; StOMP improvement; TPR estimation; asymptotic statistical properties; computation complexity reduction; distribution parameter estimation residual; false positive rate reduction; large-scale systems; least-squares method; linear underdetermined problems; matched filter coefficients; mixed probability distribution; outlier deletion method; sparse vector estimation speed; sparse vector solution problem estimation accuracy improvement; sparse vector support set; true positive rate estimation; Accuracy; Complexity theory; Educational institutions; Electronic mail; Estimation; Matching pursuit algorithms; Vectors; Linear Underdetermined Equations; Sparse Solution; Stagewise Orthogonal Matching Pursuit; Systems Biology;