Redirigiendo al acceso original de articulo en 19 segundos...
Inicio  /  Algorithms  /  Vol: 14 Par: 11 (2021)  /  Artículo
ARTÍCULO
TITULO

A Linearly Involved Generalized Moreau Enhancement of l2,1-Norm with Application to Weighted Group Sparse Classification

Yang Chen    
Masao Yamagishi and Isao Yamada    

Resumen

This paper proposes a new group-sparsity-inducing regularizer to approximate l2,0 l 2 , 0 pseudo-norm. The regularizer is nonconvex, which can be seen as a linearly involved generalized Moreau enhancement of l2,1 l 2 , 1 -norm. Moreover, the overall convexity of the corresponding group-sparsity-regularized least squares problem can be achieved. The model can handle general group configurations such as weighted group sparse problems, and can be solved through a proximal splitting algorithm. Among the applications, considering that the bias of convex regularizer may lead to incorrect classification results especially for unbalanced training sets, we apply the proposed model to the (weighted) group sparse classification problem. The proposed classifier can use the label, similarity and locality information of samples. It also suppresses the bias of convex regularizer-based classifiers. Experimental results demonstrate that the proposed classifier improves the performance of convex l2,1 l 2 , 1 regularizer-based methods, especially when the training data set is unbalanced. This paper enhances the potential applicability and effectiveness of using nonconvex regularizers in the frame of convex optimization.

 Artículos similares