An SDP Relaxation for the Sparse Integer Least Squares Problem
In this paper, we study the sparse integer least squares problem (SILS), an NP-hard variant of least squares with sparse {0, 1, -1}-vectors. We propose an l1-based SDP relaxation, and a randomized algorithm for SILS, which computes feasible solutions with high probability with an asymptotic approximation ratio 1/T^2 as long as the sparsity constant σ … Read more