GRAPH-STRUCTURED SPARSE REGULARIZATION VIA CONVEX OPTIMIZATION
Hiroki Kuroda, Daichi Kitahara
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In this paper, we present a novel convex method for the graph-structured sparse recovery. While various structured sparsities can be represented as the graph-structured sparsity, graph-structured sparse recovery remains to be a challenging nonconvex problem. To solve this difficulty, we propose a convex penalty function which automatically identifies the relevant subgraph of an underlying graph. We design a graph-structured recovery model using the proposed penalty, and develop its first-order iterative solver which consists only of simple operations such as closed-form proximity operators and difference operator on the graph. Numerical experiments show that the proposed method has better estimation accuracy than the existing convex regularizations using fixed structures.