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Mutual information for symmetric rank-one matrix estimation: A proof of the replica formula

机译:对称秩一矩阵估计的互信息:复制公式的证明

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Factorizing low-rank matrices has many applications in machine learning and statistics. For probabilistic models in the Bayes optimal setting, a general expression for the mutual information has been proposed using heuristic statistical physics computations, and proven in few specific cases. Here, we show how to rigorously prove the conjectured formula for the symmetric rank-one case. This allows to express the minimal mean-square-error and to characterize the detectability phase transitions in a large set of estimation problems ranging from community detection to sparse PCA. We also show that for a large set of parameters, an iterative algorithm called approximate message-passing is Bayes optimal. There exists, however, a gap between what currently known polynomial algorithms can do and what is expected information theoretically. Additionally, the proof technique has an interest of its own and exploits three essential ingredients: the interpolation method introduced in statistical physics by Guerra, the analysis of the approximate message-passing algorithm and the theory of spatial coupling and threshold saturation in coding. Our approach is generic and applicable to other open problems in statistical estimation where heuristic statistical physics predictions are available.
机译:分解低阶矩阵在机器学习和统计中有许多应用。对于贝叶斯最优设置中的概率模型,已经使用启发式统计物理计算为互信息提出了一个通用表达式,并在少数特定情况下得到了证明。在这里,我们展示了如何严格证明对称秩一情况的猜想公式。这允许表达最小的均方误差,并在从社区检测到稀疏PCA的大量估计问题中表征可检测性相变。我们还表明,对于大量参数而言,称为近似消息传递的迭代算法是贝叶斯最优方法。但是,当前已知的多项式算法可以执行的操作与理论上期望的信息之间存在差距。另外,证明技术有其自身的特色,并利用了三个基本要素:Guerra在统计物理学中引入的插值方法,对近似消息传递算法的分析以及编码中的空间耦合和阈值饱和的理论。我们的方法是通用的,适用于可以进行启发式统计物理预测的统计估计中的其他未解决问题。

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