The sparse parity matrix
Abstract
Let A be an n× n-matrix over F2 whose every entry equals 1 with probability d/n independently for a fixed d>0. Draw a vector y randomly from the column space of A. It is a simple observation that the entries of a random solution x to A x=y are asymptotically pairwise independent, i.e., Σi<jE|P[xi=s,\,xj=tA]-P[xi=sA]P[xj=tA]|=o(n2) for s,t∈F2. But what can we say about the overlap of two random solutions x,x', defined as n-1Σi=1n1\xi=xi'\? We prove that for d<e the overlap concentrates on a single deterministic value α*(d). By contrast, for d>e the overlap concentrates on a single value once we condition on the matrix A, while over the probability space of A its conditional expectation vacillates between two different values α*(d)<α*(d), either of which occurs with probability 1/2+o(1). This bifurcated non-concentration result provides an instructive contribution to both the theory of random constraint satisfaction problems and of inference problems on random structures.
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