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Poster

Sparse Polynomial Learning and Graph Sketching

Murat Kocaoglu · Karthikeyan Shanmugam · Alex Dimakis · Adam Klivans

Level 2, room 210D

Abstract: Let f:{1,1}nRf:{1,1}nR be a polynomial with at most ss non-zero real coefficients. We give an algorithm for exactly reconstructing ff given random examples from the uniform distribution on {1,1}n{1,1}n that runs in time polynomial in nn and 2s2s and succeeds if the function satisfies the \textit{unique sign property}: there is one output value which corresponds to a unique set of values of the participating parities. This sufficient condition is satisfied when every coefficient of ff is perturbed by a small random noise, or satisfied with high probability when ss parity functions are chosen randomly or when all the coefficients are positive. Learning sparse polynomials over the Boolean domain in time polynomial in nn and 2s2s is considered notoriously hard in the worst-case. Our result shows that the problem is tractable for almost all sparse polynomials. Then, we show an application of this result to hypergraph sketching which is the problem of learning a sparse (both in the number of hyperedges and the size of the hyperedges) hypergraph from uniformly drawn random cuts. We also provide experimental results on a real world dataset.

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