A Ihara-Bass Formula for Non-Boolean Matrices and Strong Refutations of Random CSPs

We define a novel notion of ``non-backtracking'' matrix associated to any symmetric matrix, and we prove a ``Ihara-Bass'' type formula for it. We use this theory to prove new results on polynomial-time strong refutations of random constraint satisfaction problems with variables per constraints (k-CSPs). For a random k-CSP instance constructed out of a constraint that is satisfied by a fraction of assignments, if the instance contains variables and constraints, we can efficiently compute a certificate that the optimum satisfies at most a fraction of constraints. Previously, this was known for even , but for odd one needed random constraints to achieve the same conclusion. Although the improvement is only polylogarithmic, it overcomes a significant barrier to these types of results. Strong refutation results based on current approaches construct a certificate that a certain matrix associated to the k-CSP instance is quasirandom. Such certificate can come from a Feige-Ofek type argument, from an application of Grothendieck's inequality, or from a spectral bound obtained with a trace argument. The first two approaches require a union bound that cannot work when the number of constraints is and the third one cannot work when the number of constraints is . We further apply our techniques to obtain a new PTAS finding assignments for -CSP instances with constraints in the semi-random settings where the constraints are random, but the sign patterns are adversarial.
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