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Near-optimal Active Regression of Single-Index Models

Abstract

The active regression problem of the single-index model is to solve minxf(Ax)bp\min_x \lVert f(Ax)-b\rVert_p, where AA is fully accessible and bb can only be accessed via entry queries, with the goal of minimizing the number of queries to the entries of bb. When ff is Lipschitz, previous results only obtain constant-factor approximations. This work presents the first algorithm that provides a (1+ε)(1+\varepsilon)-approximation solution by querying O~(dp21/εp2)\tilde{O}(d^{\frac{p}{2}\vee 1}/\varepsilon^{p\vee 2}) entries of bb. This query complexity is also shown to be optimal up to logarithmic factors for p[1,2]p\in [1,2] and the ε\varepsilon-dependence of 1/εp1/\varepsilon^p is shown to be optimal for p>2p>2.

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@article{li2025_2502.18213,
  title={ Near-optimal Active Regression of Single-Index Models },
  author={ Yi Li and Wai Ming Tai },
  journal={arXiv preprint arXiv:2502.18213},
  year={ 2025 }
}
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