Title :
Structured sparse-low rank matrix factorization for the EEG inverse problem
Author :
Montoya-Martinez, Jair ; Artes-Rodriguez, A. ; Pontil, Massimiliano
Author_Institution :
Dept. of Signal Process. & Commun., Univ. Carlos III de Madrid, Leganes, Spain
Abstract :
We consider the estimation of the Brain Electrical Sources (BES) matrix from noisy EEG measurements, commonly named as the EEG inverse problem. We propose a new method based on the factorization of the BES as a product of a sparse coding matrix and a dense latent source matrix. This structure is enforced by minimizing a regularized functional that includes the ℓ21-norm of the coding matrix and the squared Frobenius norm of the latent source matrix. We develop an alternating optimization algorithm to solve the resulting nonsmooth-nonconvex minimization problem. We have evaluated our approach under a simulated scenario consisting on estimating a synthetic BES matrix with 5124 sources. We compare the performance of our method respect to the Lasso, Group Lasso, Sparse Group Lasso and Trace norm regularizers.
Keywords :
concave programming; electroencephalography; inverse problems; matrix decomposition; medical signal processing; minimisation; sparse matrices; ℓ21-norm; BES matrix; EEG inverse problem; alternating optimization algorithm; brain electrical source matrix; dense latent source matrix; group Lasso method; noisy EEG measurements; nonsmooth-nonconvex minimization problem; regularized functional minimization; sparse coding matrix; sparse group Lasso method; squared Frobenius norm; structured sparse-low rank matrix factorization; trace norm regularizers; Brain modeling; Electroencephalography; Evolution (biology); Inverse problems; Noise measurement; Optimization; Sparse matrices;
Conference_Titel :
Cognitive Information Processing (CIP), 2014 4th International Workshop on
Conference_Location :
Copenhagen
DOI :
10.1109/CIP.2014.6844505