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Variable Selection is Hard

Published 15 Dec 2014 in cs.CC | (1412.4832v1)

Abstract: Variable selection for sparse linear regression is the problem of finding, given an m x p matrix B and a target vector y, a sparse vector x such that Bx approximately equals y. Assuming a standard complexity hypothesis, we show that no polynomial-time algorithm can find a k'-sparse x with ||Bx-y||2<=h(m,p), where k'=k*2{log{1-delta} p} and h(m,p)<=pC_1m1-C_2, where delta>0, C_1>0,C_2>0 are arbitrary. This is true even under the promise that there is an unknown k-sparse vector x^ satisfying Bx*=y. We prove a similar result for a statistical version of the problem in which the data are corrupted by noise. To the authors' knowledge, these are the first hardness results for sparse regression that apply when the algorithm simultaneously has k'>k and h(m,p)>0.

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