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Optimal linear estimation under unknown nonlinear transform

Published 13 May 2015 in stat.ML, cs.IT, and math.IT | (1505.03257v1)

Abstract: Linear regression studies the problem of estimating a model parameter $\beta* \in \mathbb{R}p$, from $n$ observations ${(y_i,\mathbf{x}i)}{i=1}n$ from linear model $y_i = \langle \mathbf{x}_i,\beta* \rangle + \epsilon_i$. We consider a significant generalization in which the relationship between $\langle \mathbf{x}_i,\beta* \rangle$ and $y_i$ 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 $\beta*$ in settings (i.e., classes of link function $f$) where previous algorithms fail. In general, our algorithm requires only very mild restrictions on the (unknown) functional relationship between $y_i$ and $\langle \mathbf{x}_i,\beta* \rangle$. We also consider the high dimensional setting where $\beta*$ is sparse ,and introduce a two-stage nonconvex framework that addresses estimation challenges in high dimensional regimes where $p \gg n$. For a broad class of link functions between $\langle \mathbf{x}_i,\beta* \rangle$ and $y_i$, we establish minimax lower bounds that demonstrate the optimality of our estimators in both the classical and high dimensional regimes.

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