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Pointwise Generalization in Deep Neural Networks

发布时间:2025-12-23

演讲人:Yunbei Xu [NUS]

时间:11:00-12:00, Dec 23, 2025 (Tue)

地点:RM 1-222, FIT Building

内容:

We address the fundamental question of why deep neural networks generalize by establishing a pointwise generalization theory for fully connected networks. This framework resolves long-standing barriers to characterizing the rich, nonlinear feature-learning regime and builds a new statistical foundation for representation learning. For each trained model, we characterize the hypothesis via a pointwise Riemannian Dimension, derived from the eigenvalues of the learned feature representations across layers. This establishes a principled framework for deriving hypothesis-dependent, spectrum-aware generalization bounds. These bounds offer a systematic upgrade over approaches based on model size, products of norms, and infinite-width linearizations, yielding guarantees that are orders of magnitude tighter in both theory and experiment. Analytically, we identify the structural properties and mathematical principles that explain the tractability of deep networks. Empirically, the pointwise Riemannian Dimension exhibits substantial feature compression, decreases with increased over-parameterization, and captures the implicit bias of optimizers. Taken together, our results indicate that deep networks are mathematically tractable in practical regimes and that their generalization is sharply explained by pointwise, spectrum-aware complexity.

个人简介:

Yunbei Xu is a Presidential Young Professor at the National University of Singapore (joined 2024). A mathematician studying intelligence and complex systems, his work unifies applied mathematics, statistics, and operations research with ideas from physics and neuroscience to drive fundamental advances in AI, physical systems, and decision science. His research has received best paper awards across machine learning, operations research, and applied probability.


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演讲人 Yunbei Xu [NUS] 时间 11:00-12:00, Dec 23, 2025 (Tue)
地点 RM 1-222, FIT Building EN
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