In many problems in modern statistics and machine learning, it is often of interest to establish that a first order method on a non-convex risk function eventually enters a region of parameter space in which the risk is locally convex. We derive an asymptotic comparison inequality, which we call the Sudakov-Fernique post-AMP inequality, which, in a certain class of problems involving a GOE matrix, is able to probe properties of an optimization landscape locally around the iterates of an approximate message passing (AMP) algorithm. As an example of its use, we provide a new, and arguably simpler, proof of some of the results of Celentano et al. (2021), which establishes that the so-called TAP free energy in the $\mathbb{Z}_2$-synchronization problem is locally convex in the region to which AMP converges. We further prove a conjecture of El Alaoui et al. (2022) involving the local convexity of a related but distinct TAP free energy, which, as a consequence, confirms that their algorithm efficiently samples from the Sherrington-Kirkpatrick Gibbs measure throughout the "easy" regime.
翻译:在现代统计和机器学习的许多问题中,人们往往有兴趣确定非碳化风险函数的第一顺序方法最终会进入一个区域参数空间,其风险是局部的。我们得出一种无症状比较的不平等,我们称之为Sudakov-Fernique后AMP的不平等,在涉及GOE矩阵的某类问题中,这种不平等能够探寻当地最优化景观的特性,环绕一种大致信息传递(AMP)算法的循环。作为使用这一方法的一个例子,我们提供了一个新的、可以说更简单的证明,证明Celentano等人(2021年)的一些结果,其中确定所谓的TAP免费能源($\mathbb ⁇ 2$-Synchron化问题)是AMP汇合的区域内的当地混凝点。我们进一步证明El Alaoui等人(2022年)的直观特征,涉及一种相关但独特的TAP免费能源的本地混凝度,因此证实了他们从Sherrington-KirkpricalcalcalGrivestistal测量系统得到的高效的样本。