Title
L0-norm Sparse Graph-regularized SVD for Biclustering.
Abstract
Learning the structure is a central challenge for high dimensional data (e.g., gene expression data). Recently, a sparse singular value decomposition (SVD) has been used as a biclustering tool to achieve this goal. However, this model ignores the structural information between variables (e.g., gene interaction graph). Although typical graph-regularized norm can incorporate such prior graph information to get accurate discovery and better interpretability, it fails to consider the opposite effect of variables with different signs. Motivated by the development of sparse coding and graph-regularized norm, we propose a novel sparse graph-regularized SVD as a powerful biclustering tool for analyzing high-dimensional data. The key of this method is to impose two penalties including a novel graph-regularized norm ($|pmb{u}|pmb{L}|pmb{u}|$) and $L_0$-norm ($|pmb{u}|_0$) on singular vectors to induce structural sparsity and enhance interpretability. We design an efficient Alternating Iterative Sparse Projection (AISP) algorithm to solve it. Finally, we apply our method and related ones to simulated and real data to show its efficiency in capturing natural blocking structures.
Year
Venue
Field
2016
arXiv: Learning
Interpretability,Graph,Singular value decomposition,Mathematical optimization,Clustering high-dimensional data,Neural coding,Artificial intelligence,Biclustering,Mathematics,Machine learning,Dense graph
DocType
Volume
Citations 
Journal
abs/1603.06035
1
PageRank 
References 
Authors
0.39
10
3
Name
Order
Citations
PageRank
Wenwen Min1163.88
Juan Liu251.83
Shihua Zhang342436.27