On the hardness of learning sparse parities
Arnab Bhattacharyya, Ameet Gadekar, Suprovat Ghoshal, Rishi, Saket

TL;DR
This paper explores the computational hardness of finding sparse solutions to linear systems over F_2, establishing new complexity bounds and hardness results for related problems like k-EvenSet and k-VectorSum, with implications for learning theory.
Contribution
It proves new lower bounds and hardness results for sparse parity problems, connecting them to the k-Clique problem and advancing understanding of their computational difficulty.
Findings
k-EvenSet has no efficient algorithms under certain complexity assumptions.
k-VectorSum is W[1]-hard with fewer equations than previously known.
Hardness results imply limits on approximate learning of k-parities.
Abstract
This work investigates the hardness of computing sparse solutions to systems of linear equations over F_2. Consider the k-EvenSet problem: given a homogeneous system of linear equations over F_2 on n variables, decide if there exists a nonzero solution of Hamming weight at most k (i.e. a k-sparse solution). While there is a simple O(n^{k/2})-time algorithm for it, establishing fixed parameter intractability for k-EvenSet has been a notorious open problem. Towards this goal, we show that unless k-Clique can be solved in n^{o(k)} time, k-EvenSet has no poly(n)2^{o(sqrt{k})} time algorithm and no polynomial time algorithm when k = (log n)^{2+eta} for any eta > 0. Our work also shows that the non-homogeneous generalization of the problem -- which we call k-VectorSum -- is W[1]-hard on instances where the number of equations is O(k log n), improving on previous reductions which produced…
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