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Non-Convex Rank Minimization via an Empirical Bayesian Approach

机译:通过经验贝叶斯方法进行的非凸秩最小化

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In many applications that require matrix solutions of minimal rank, the underlying cost function is non-convex leading to an intractable, NP-hard optimization problem. Consequently, the convex nuclear norm is frequently used as a surrogate penalty term for matrix rank. The problem is that in many practical scenarios there is no longer any guarantee that we can correctly estimate generative low-rank matrices of interest, theoretical special cases notwithstanding. Consequently, this paper proposes an alternative empirical Bayesian procedure build upon a variational approximation that, unlike the nuclear norm, retains the same globally minimizing point estimate as the rank function under many useful constraints. However, locally minimizing solutions are largely smoothed away via marginalization, allowing the algorithm to succeed when standard convex relaxations completely fail. While the proposed methodology is generally applicable to a wide range of low-rank applications, we focus our attention on the robust principal component analysis problem (RPCA), which involves estimating an unknown low-rank matrix with unknown sparse corruptions. Theoretical and empirical evidence are presented to show that our method is potentially superior to related MAP-based approaches, for which the convex principle component pursuit (PCP) algorithm (Candes et al., 2011) can be viewed as a special case.
机译:在许多需要最小秩矩阵解决方案的应用中,潜在的成本函数是不凸的,从而导致棘手的NP难题。因此,凸核范数经常被用作矩阵秩的代用惩罚项。问题是,尽管有理论上的特殊情况,但在许多实际情况下,我们无法再保证我们能够正确估计感兴趣的生成低秩矩阵。因此,本文提出了一种基于变分近似的替代经验贝叶斯程序,该变分近似与核规范不同,在许多有用的约束下保留了与秩函数相同的全局最小化点估计。但是,局部最小化的解决方案通过边际化在很大程度上被消除了,从而使标准凸松弛完全失败时该算法能够成功。虽然所提出的方法通常适用于各种低等级的应用程序,但我们将注意力集中在健壮的主成分分析问题(RPCA)上,该问题涉及估计具有未知的稀疏损坏的未知的低等级矩阵。提出的理论和经验证据表明,我们的方法可能优于相关的基于MAP的方法,对于该方法,可以将凸主成分追踪(PCP)算法(Candes等人,2011)视为一种特殊情况。

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