Algorithms and Barriers in the Symmetric Binary Perceptron Model
Abstract
The symmetric binary perceptron (SBP) exhibits a dramatic statistical-to-computational gap: the densities at which known efficient algorithms find solutions are far below the threshold for the existence of solutions. Furthermore, the SBP exhibits a striking structural property: at all positive constraint densities almost all of its solutions are 'totally frozen' singletons separated by large Hamming distance perkins2021frozen,abbe2021proof. This suggests that finding a solution to the SBP may be computationally intractable. At the same time, the SBP does admit polynomial-time search algorithms at low enough densities. A conjectural explanation for this conundrum was put forth in baldassi2020clustering: efficient algorithms succeed in the face of freezing by finding exponentially rare clusters of large size. However, it was discovered recently that such rare large clusters exist at all subcritical densities, even at those well above the limits of known efficient algorithms abbe2021binary. Thus the driver of the statistical-to-computational gap exhibited by this model remains a mystery. In this paper, we conduct a different landscape analysis to explain the algorithmic tractability of this problem. We show that at high enough densities the SBP exhibits the multi Overlap Gap Property (m-OGP), an intricate geometrical property known to be a rigorous barrier for large classes of algorithms. Our analysis shows that the m-OGP threshold (a) is well below the satisfiability threshold; and (b) matches the best known algorithmic threshold up to logarithmic factors as m∞. We then prove that the m-OGP rules out the class of stable algorithms for the SBP above this threshold. We conjecture that the m ∞ limit of the m-OGP threshold marks the algorithmic threshold for the problem.
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