On the Complexity of Learning Sparse Functions with Statistical and Gradient Queries
July 08, 2024 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Nirmit Joshi, Theodor Misiakiewicz, Nathan Srebro
arXiv ID
2407.05622
Category
cs.LG: Machine Learning
Cross-listed
cs.DS
Citations
11
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
The goal of this paper is to investigate the complexity of gradient algorithms when learning sparse functions (juntas). We introduce a type of Statistical Queries ($\mathsf{SQ}$), which we call Differentiable Learning Queries ($\mathsf{DLQ}$), to model gradient queries on a specified loss with respect to an arbitrary model. We provide a tight characterization of the query complexity of $\mathsf{DLQ}$ for learning the support of a sparse function over generic product distributions. This complexity crucially depends on the loss function. For the squared loss, $\mathsf{DLQ}$ matches the complexity of Correlation Statistical Queries $(\mathsf{CSQ})$--potentially much worse than $\mathsf{SQ}$. But for other simple loss functions, including the $\ell_1$ loss, $\mathsf{DLQ}$ always achieves the same complexity as $\mathsf{SQ}$. We also provide evidence that $\mathsf{DLQ}$ can indeed capture learning with (stochastic) gradient descent by showing it correctly describes the complexity of learning with a two-layer neural network in the mean field regime and linear scaling.
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