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Sparse Bayesian Methods for Low-Rank Matrix Estimation

机译:低秩矩阵估计的稀疏贝叶斯方法

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摘要

Recovery of low-rank matrices has recently seen significant activity in many areas of science and engineering, motivated by recent theoretical results for exact reconstruction guarantees and interesting practical applications. In this paper, we present novel recovery algorithms for estimating low-rank matrices in matrix completion and robust principal component analysis based on sparse Bayesian learning (SBL) principles. Starting from a matrix factorization formulation and enforcing the low-rank constraint in the estimates as a sparsity constraint, we develop an approach that is very effective in determining the correct rank while providing high recovery performance. We provide connections with existing methods in other similar problems and empirical results and comparisons with current state-of-the-art methods that illustrate the effectiveness of this approach.
机译:低阶矩阵的恢复最近在科学和工程学的许多领域中都有着重要的活动,这是由于最近的理论结果为精确的重构保证和有趣的实际应用提供了动力。在本文中,我们提出了一种新颖的恢复算法,用于基于矩阵稀疏贝叶斯学习(SBL)原理估计矩阵完成中的低秩矩阵和鲁棒的主成分分析。从矩阵分解公式开始,并在估计中将低秩约束作为稀疏性约束实施,我们开发了一种在确定正确秩的同时提供高恢复性能的非常有效的方法。我们提供了与其他类似问题和经验结果中的现有方法的联系,并与说明该方法有效性的最新技术进行了比较。

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