Lifting high-dimensional nonlinear models with Gaussian regressors

We study the problem of recovering a structured signal from high-dimensional data for some nonlinear (and potentially unknown) link function , when the regressors are iid Gaussian. Brillinger (1982) showed that ordinary least-squares estimates up to a constant of proportionality , which depends on . Recently, Plan & Vershynin (2015) extended this result to the high-dimensional setting deriving sharp error bounds for the generalized Lasso. Unfortunately, both least-squares and the Lasso fail to recover when . For example, this includes all even link functions. We resolve this issue by proposing and analyzing an alternative convex recovery method. In a nutshell, our method treats such link functions as if they were linear in a lifted space of higher-dimension. Interestingly, our error analysis captures the effect of both the nonlinearity and the problem's geometry in a few simple summary parameters.
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