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The All-or-Nothing Phenomenon in Sparse Linear Regression

Publication ,  Conference
Reeves, G; Xu, J; Zadik, I
Published in: Proceedings of Machine Learning Research
January 1, 2019

We study the problem of recovering a hidden binary k-sparse p-dimensional vector β from n noisy linear observations Y = Xβ + W where Xij are i.i.d. N(0, 1) and Wi are i.i.d. N(0, σ2). A closely related hypothesis testing problem is to distinguish the pair (X, Y) generated from this structured model from a corresponding null model where (X, Y) consist of purely independent Gaussian entries. In the low sparsity k = o(√p) and high signal-to-noise ratio k/σ2 = Ω (1) regime, we establish an “All-or-Nothing” information-theoretic phase transition at a critical sample size n∗ = 2k log (p/k) /log (1 + k/σ2), resolving a conjecture of Gamarnik and Zadik (2017a). Specifically, we show that if lim infp→∞ n/n∗ > 1, then the maximum likelihood estimator almost perfectly recovers the hidden vector with high probability and moreover the true hypothesis can be detected with a vanishing error probability. Conversely, if lim infp→∞ n/n∗ < 1, then it becomes information-theoretically impossible even to recover an arbitrarily small but fixed fraction of the hidden vector support, or to test hypotheses strictly better than random guess. Our proof of the impossibility result builds upon two key techniques, which could be of independent interest. First, we use a conditional second moment method to upper bound the Kullback-Leibler (KL) divergence between the structured and the null model. Second, inspired by the celebrated area theorem, we establish a lower bound to the minimum mean squared estimation error of the hidden vector in terms of the KL divergence between the two models.

Duke Scholars

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2019

Volume

99

Start / End Page

2652 / 2663
 

Citation

APA
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MLA
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Reeves, G., Xu, J., & Zadik, I. (2019). The All-or-Nothing Phenomenon in Sparse Linear Regression. In Proceedings of Machine Learning Research (Vol. 99, pp. 2652–2663).
Reeves, G., J. Xu, and I. Zadik. “The All-or-Nothing Phenomenon in Sparse Linear Regression.” In Proceedings of Machine Learning Research, 99:2652–63, 2019.
Reeves G, Xu J, Zadik I. The All-or-Nothing Phenomenon in Sparse Linear Regression. In: Proceedings of Machine Learning Research. 2019. p. 2652–63.
Reeves, G., et al. “The All-or-Nothing Phenomenon in Sparse Linear Regression.” Proceedings of Machine Learning Research, vol. 99, 2019, pp. 2652–63.
Reeves G, Xu J, Zadik I. The All-or-Nothing Phenomenon in Sparse Linear Regression. Proceedings of Machine Learning Research. 2019. p. 2652–2663.

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2019

Volume

99

Start / End Page

2652 / 2663