Title :
Distributed Sparse Recursive Least-Squares Over Networks
Author :
Zhaoting Liu ; Ying Liu ; Chunguang Li
Author_Institution :
Dept. of Electron. Eng., Shaoxing Univ., Shaoxing, China
Abstract :
Distributed estimation over networks has received much attention in recent years due to its broad applicability. Many signals in nature present high level of sparsity, which contain only a few large coefficients among many negligible ones. In this paper, we address the problem of in-network distributed estimation for sparse vectors, and develop several distributed sparse recursive least-squares (RLS) algorithms. The proposed algorithms are based on the maximum likelihood framework, and the expectation-maximization algorithm, with the aid of thresholding operators, is used to numerically solve the sparse estimation problem. To improve the estimation performance, the thresholding operators related to l0- and l1-norms with real-time self-adjustable thresholds are derived. With these thresholding operators, we can exploit the underlying sparsity to implement the distributed estimation with low computational complexity and information exchange amount among neighbors. The sparsity-promoting intensity is also adaptively adjusted so that a good performance of the sparse solution can be achieved. Both theoretical analysis and numerical simulations are presented to show the effectiveness of the proposed algorithms.
Keywords :
distributed algorithms; expectation-maximisation algorithm; least squares approximations; recursive estimation; signal processing; distributed algorithm; expectation-maximization algorithm; in-network distributed estimation; maximum likelihood algorithm; sparse estimation problem; sparse recursive least square algorithm; sparse vectors; thresholding operator; Algorithm design and analysis; Computational complexity; Least squares approximations; Maximum likelihood estimation; Signal processing algorithms; Vectors; Wireless sensor network; adaptive signal processing; distributed estimation; expectation-maximization algorithm; recursive least square; sparsity;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2014.2302731