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任意条目依赖下的结构化矩阵学习与马尔可夫转移核估计

Structured matrix learning under arbitrary entrywise dependence and estimation of Markov transition kernel

Annals of Statistics · 2025
被引 0
ABS 4*

中文导读

研究了噪声矩阵条目任意依赖下的低秩加稀疏矩阵恢复问题,提出了约束最小二乘估计器并证明其最优性,应用于马尔可夫转移核估计等统计学习问题。

Abstract

The problem of structured matrix estimation has been studied mostly under strong noise dependence assumptions. This paper considers a general framework of noisy low-rank-plus-sparse matrix recovery, where the noise matrix may come from any joint distribution with arbitrary dependence across entries. We propose an incoherent-constrained least-square estimator and prove its tightness both in the sense of deterministic lower bound and matching minimax risks under various noise distributions. To attain this, we establish a novel result asserting that the difference between two arbitrary low-rank incoherent matrices must spread energy out across its entries; in other words, it cannot be too sparse, which sheds light on the structure of incoherent low-rank matrices and may be of independent interest. We then showcase the applications of our framework to several important statistical machine learning problems. In the problem of estimating a structured Markov transition kernel, the proposed method achieves the minimax optimality and the result can be extended to estimating the conditional mean operator, a crucial component in reinforcement learning. The applications to multitask regression and structured covariance estimation are also presented. We propose an alternating minimization algorithm to approximately solve the potentially hard optimization problem. Numerical results corroborate the effectiveness of our method which typically converges in a few steps.

矩阵估计低秩加稀疏恢复马尔可夫过程统计机器学习强化学习