A Survey on Statistical Theory of Deep Learning: Approximation, Training Dynamics, and Generative Models
- URL: http://arxiv.org/abs/2401.07187v3
- Date: Mon, 16 Sep 2024 09:57:35 GMT
- Title: A Survey on Statistical Theory of Deep Learning: Approximation, Training Dynamics, and Generative Models
- Authors: Namjoon Suh, Guang Cheng,
- Abstract summary: We review the literature on statistical theories of neural networks from three perspectives.
Results on excess risks for neural networks are reviewed.
Papers that attempt to answer how the neural network finds the solution that can generalize well on unseen data'' are reviewed.
- Score: 13.283281356356161
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In this article, we review the literature on statistical theories of neural networks from three perspectives: approximation, training dynamics and generative models. In the first part, results on excess risks for neural networks are reviewed in the nonparametric framework of regression (and classification in Appendix~{\color{blue}B}). These results rely on explicit constructions of neural networks, leading to fast convergence rates of excess risks. Nonetheless, their underlying analysis only applies to the global minimizer in the highly non-convex landscape of deep neural networks. This motivates us to review the training dynamics of neural networks in the second part. Specifically, we review papers that attempt to answer ``how the neural network trained via gradient-based methods finds the solution that can generalize well on unseen data.'' In particular, two well-known paradigms are reviewed: the Neural Tangent Kernel (NTK) paradigm, and Mean-Field (MF) paradigm. Last but not least, we review the most recent theoretical advancements in generative models including Generative Adversarial Networks (GANs), diffusion models, and in-context learning (ICL) in the Large Language Models (LLMs) from two perpsectives reviewed previously, i.e., approximation and training dynamics.
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