Algorithms and Barriers in the Symmetric Binary Perceptron Model
David Gamarnik, Eren C. K{\i}z{\i}lda\u{g}, Will Perkins, Changji Xu

TL;DR
This paper investigates the symmetric binary perceptron model, revealing a geometric barrier called the multi Overlap Gap Property (m-OGP) that explains the limits of efficient algorithms and the statistical-to-computational gap.
Contribution
The paper introduces the m-OGP as a new landscape property in the SBP, linking it to algorithmic hardness and providing a geometric explanation for the gap.
Findings
m-OGP exists at high densities, below the satisfiability threshold.
m-OGP threshold aligns with the best known algorithmic thresholds up to logarithmic factors.
m-OGP rules out stable algorithms above this threshold.
Abstract
The symmetric binary perceptron () 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 exhibits a striking structural property: at all positive constraint densities almost all of its solutions are 'totally frozen' singletons separated by large Hamming distance \cite{perkins2021frozen,abbe2021proof}. This suggests that finding a solution to the may be computationally intractable. At the same time, the does admit polynomial-time search algorithms at low enough densities. A conjectural explanation for this conundrum was put forth in \cite{baldassi2020clustering}: efficient algorithms succeed in the face of freezing by finding exponentially rare clusters of large size. However, it was…
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Taxonomy
TopicsRough Sets and Fuzzy Logic · Advanced Algebra and Logic · Neural Networks and Applications
