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L0L_0 regularized estimation for nonlinear models that have sparse underlying linear structures

Abstract

We study the estimation of β\beta for the nonlinear model y=f(X\spβ)+ϵy = f(X\sp{\top}\beta) + \epsilon when ff is a nonlinear transformation that is known, β\beta has sparse nonzero coordinates, and the number of observations can be much smaller than that of parameters (npn\ll p). We show that in order to bound the L2L_2 error of the L0L_0 regularized estimator β^\hat\beta, i.e., β^β2\|\hat\beta - \beta\|_2, it is sufficient to establish two conditions. Based on this, we obtain bounds of the L2L_2 error for (1) L0L_0 regularized maximum likelihood estimation (MLE) for exponential linear models and (2) L0L_0 regularized least square (LS) regression for the more general case where ff is analytic. For the analytic case, we rely on power series expansion of ff, which requires taking into account the singularities of ff.

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