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Surrogate Aided Unsupervised Recovery of Sparse Signals in Single Index Models for Binary Outcomes

Abstract

We consider the recovery of regression coefficients, denoted by β0\boldsymbol{\beta}_0, for a single index model (SIM) relating a binary outcome YY to a set of possibly high dimensional covariates X\boldsymbol{X}, based on a large but únlabeled' dataset U\mathcal{U}, with YY never observed. On U\mathcal{U}, we fully observe X\boldsymbol{X} and additionally, a surrogate SS which, while not being strongly predictive of YY throughout the entirety of its support, can forecast it with high accuracy when it assumes extreme values. Such datasets arise naturally in modern studies involving large databases such as electronic medical records (EMR) where YY, unlike (X,S)(\boldsymbol{X}, S), is difficult and/or expensive to obtain. In EMR studies, an example of YY and SS would be the true disease phenotype and the count of the associated diagnostic codes respectively. Assuming another SIM for SS given X\boldsymbol{X}, we show that under sparsity assumptions, we can recover β0\boldsymbol{\beta}_0 proportionally by simply fitting a least squares LASSO estimator to the subset of the observed data on (X,S)(\boldsymbol{X}, S) restricted to the extreme sets of SS, with YY imputed using the surrogacy of SS. We obtain sharp finite sample performance bounds for our estimator, including deterministic deviation bounds and probabilistic guarantees. We demonstrate the effectiveness of our approach through multiple simulation studies, as well as by application to real data from an EMR study conducted at the Partners HealthCare Systems.

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