Frozen 1-RSB structure of the symmetric Ising perceptron

Will Perkins, Changji Xu
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Abstract

We prove, under an assumption on the critical points of a real-valued function, that the symmetric Ising perceptron exhibits the ‘frozen 1-RSB’ structure conjectured by Krauth and Mézard in the physics literature; that is, typical solutions of the model lie in clusters of vanishing entropy density. Moreover, we prove this in a very strong form conjectured by Huang, Wong, and Kabashima: a typical solution of the model is isolated with high probability and the Hamming distance to all other solutions is linear in the dimension. The frozen 1-RSB scenario is part of a recent and intriguing explanation of the performance of learning algorithms by Baldassi, Ingrosso, Lucibello, Saglietti, and Zecchina. We prove this structural result by comparing the symmetric Ising perceptron model to a planted model and proving a comparison result between the two models. Our main technical tool towards this comparison is an inductive argument for the concentration of the logarithm of number of solutions in the model.
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对称Ising感知器的冻结1-RSB结构
在实值函数临界点的假设下,证明了对称Ising感知器呈现出物理文献中kraauth和massaard猜想的“冻结1-RSB”结构;即模型的典型解存在于熵密度消失的聚类中。此外,我们用Huang, Wong和Kabashima猜想的一个非常强的形式证明了这一点:模型的一个典型解是高概率孤立的,并且到所有其他解的Hamming距离在维度上是线性的。冻结的1-RSB场景是Baldassi, Ingrosso, Lucibello, Saglietti和Zecchina最近对学习算法性能的有趣解释的一部分。我们通过比较对称的伊辛感知器模型和种植模型,并证明了两个模型之间的比较结果,证明了这一结构结果。我们进行这种比较的主要技术工具是对模型中解的对数的浓度的归纳论证。
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