Sparse high-dimensional functions have arisen as a rich framework to study the behavior of gradient-descent methods using shallow neural networks, showcasing their ability to perform feature learning beyond linear models. Amongst those functions, the simplest are single-index models , where the labels are generated by an arbitrary non-linear scalar link function applied to an unknown one-dimensional projection of the input data. By focusing on Gaussian data, several recent works have built a remarkable picture, where the so-called information exponent (related to the regularity of the link function) controls the required sample complexity. In essence, these tools exploit the stability and spherical symmetry of Gaussian distributions. In this work, building from the framework of \cite{arous2020online}, we explore extensions of this picture beyond the Gaussian setting, where both stability or symmetry might be violated. Focusing on the planted setting where is known, our main results establish that Stochastic Gradient Descent can efficiently recover the unknown direction in the high-dimensional regime, under assumptions that extend previous works \cite{yehudai2020learning,wu2022learning}.
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