Joint Alignment From Pairwise Differences with a Noisy Oracle
Abstract: In this work we consider the problem of recovering $n$ discrete random variables $x_i\in {0,\ldots,k-1}, 1 \leq i \leq n$ (where $k$ is constant) with the smallest possible number of queries to a noisy oracle that returns for a given query pair $(x_i,x_j)$ a noisy measurement of their modulo $k$ pairwise difference, i.e., $y_{ij} = (x_i-x_j) \mod k$. This is a joint discrete alignment problem with important applications in computer vision, graph mining, and spectroscopy imaging. Our main result is a polynomial time algorithm that learns exactly with high probability the alignment (up to some unrecoverable offset) using $O(n{1+o(1)})$ queries.
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