English

Optimal linear estimation under unknown nonlinear transform

Machine Learning 2015-05-14 v1 Information Theory math.IT

Abstract

Linear regression studies the problem of estimating a model parameter βRp\beta^* \in \mathbb{R}^p, from nn observations {(yi,xi)}i=1n\{(y_i,\mathbf{x}_i)\}_{i=1}^n from linear model yi=xi,β+ϵiy_i = \langle \mathbf{x}_i,\beta^* \rangle + \epsilon_i. We consider a significant generalization in which the relationship between xi,β\langle \mathbf{x}_i,\beta^* \rangle and yiy_i is noisy, quantized to a single bit, potentially nonlinear, noninvertible, as well as unknown. This model is known as the single-index model in statistics, and, among other things, it represents a significant generalization of one-bit compressed sensing. We propose a novel spectral-based estimation procedure and show that we can recover β\beta^* in settings (i.e., classes of link function ff) where previous algorithms fail. In general, our algorithm requires only very mild restrictions on the (unknown) functional relationship between yiy_i and xi,β\langle \mathbf{x}_i,\beta^* \rangle. We also consider the high dimensional setting where β\beta^* is sparse ,and introduce a two-stage nonconvex framework that addresses estimation challenges in high dimensional regimes where pnp \gg n. For a broad class of link functions between xi,β\langle \mathbf{x}_i,\beta^* \rangle and yiy_i, we establish minimax lower bounds that demonstrate the optimality of our estimators in both the classical and high dimensional regimes.

Keywords

Cite

@article{arxiv.1505.03257,
  title  = {Optimal linear estimation under unknown nonlinear transform},
  author = {Xinyang Yi and Zhaoran Wang and Constantine Caramanis and Han Liu},
  journal= {arXiv preprint arXiv:1505.03257},
  year   = {2015}
}

Comments

25 pages, 3 figures

R2 v1 2026-06-22T09:33:13.257Z