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Learning Multi-Index Models with Neural Networks via Mean-Field Langevin Dynamics

14 August 2024
Alireza Mousavi-Hosseini
Denny Wu
Murat A. Erdogdu
    MLT
    AI4CE
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Abstract

We study the problem of learning multi-index models in high-dimensions using a two-layer neural network trained with the mean-field Langevin algorithm. Under mild distributional assumptions on the data, we characterize the effective dimension deffd_{\mathrm{eff}}deff​ that controls both sample and computational complexity by utilizing the adaptivity of neural networks to latent low-dimensional structures. When the data exhibit such a structure, deffd_{\mathrm{eff}}deff​ can be significantly smaller than the ambient dimension. We prove that the sample complexity grows almost linearly with deffd_{\mathrm{eff}}deff​, bypassing the limitations of the information and generative exponents that appeared in recent analyses of gradient-based feature learning. On the other hand, the computational complexity may inevitably grow exponentially with deffd_{\mathrm{eff}}deff​ in the worst-case scenario. Motivated by improving computational complexity, we take the first steps towards polynomial time convergence of the mean-field Langevin algorithm by investigating a setting where the weights are constrained to be on a compact manifold with positive Ricci curvature, such as the hypersphere. There, we study assumptions under which polynomial time convergence is achievable, whereas similar assumptions in the Euclidean setting lead to exponential time complexity.

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@article{mousavi-hosseini2025_2408.07254,
  title={ Learning Multi-Index Models with Neural Networks via Mean-Field Langevin Dynamics },
  author={ Alireza Mousavi-Hosseini and Denny Wu and Murat A. Erdogdu },
  journal={arXiv preprint arXiv:2408.07254},
  year={ 2025 }
}
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