2024-10-18 Friday Sign in CN

Activities
Alternating Subspace Approximate Message Passing
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Reporter:
Xu Zhu, Doctor, Peking University
Inviter:
Junjie Ma, Associate Professor
Subject:
Alternating Subspace Approximate Message Passing
Time and place:
16:00-17:00 July 31(Wednesday), S515
Abstract:

Numerous renowned algorithms for tackling the compressed sensing problem employ an alternating strategy, which typically involves data matching in one module and denoising in another. Based on an in-depth analysis of the connection between the message passing and operator splitting, we present a novel approach, the Alternating Subspace Method (ASM), which intuitively combines the principles of the greedy methods (e.g., the orthogonal matching pursuit type methods) and the splitting methods (e.g., the approximate message passing type methods). Essentially, ASM modifies the splitting method by achieving fidelity in a subspace-restricted fashion. We reveal that such confining strategy still yields a consistent fixed point iteration and establish its local geometric convergence on the lasso problem. Numerical experiments on both the lasso and channel estimation problems demonstrate its high convergence rate and its capacity to incorporate different prior distributions. Further theoretical analysis also demonstrates the advantage of the motivated message-passing splitting by incorporating quasi-variance degree of freedom even for the classical lasso optimization problem. Overall, the proposed method is promising in efficiency, accuracy and flexibility, which has the potential to be competitive in different sparse recovery applications.

报告人简介:朱旭,北京大学数学科学学院博士生,主要研究兴趣为最优化方法、信号处理和压缩感知,2021年本科毕业于北京大学数学科学学院。