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Relating Regularization and Generalization through the Intrinsic Dimension of Activations

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arxiv 2211.13239 v1 pith:2IWNCYSC submitted 2022-11-23 cs.LG cs.AI

Relating Regularization and Generalization through the Intrinsic Dimension of Activations

classification cs.LG cs.AI
keywords accuracygeneralizationllidmodelmodelstrainingactivationsregularization
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Given a pair of models with similar training set performance, it is natural to assume that the model that possesses simpler internal representations would exhibit better generalization. In this work, we provide empirical evidence for this intuition through an analysis of the intrinsic dimension (ID) of model activations, which can be thought of as the minimal number of factors of variation in the model's representation of the data. First, we show that common regularization techniques uniformly decrease the last-layer ID (LLID) of validation set activations for image classification models and show how this strongly affects generalization performance. We also investigate how excessive regularization decreases a model's ability to extract features from data in earlier layers, leading to a negative effect on validation accuracy even while LLID continues to decrease and training accuracy remains near-perfect. Finally, we examine the LLID over the course of training of models that exhibit grokking. We observe that well after training accuracy saturates, when models ``grok'' and validation accuracy suddenly improves from random to perfect, there is a co-occurent sudden drop in LLID, thus providing more insight into the dynamics of sudden generalization.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. At-Grok Is Not Converged:A Measurement-Validity Audit for Grokking Representation Metrics

    cs.LG 2026-07 accept novelty 6.5

    Embedding effective rank at grokking is a transient that overstates the converged floor by 3–5× (MLP) / 1.3–1.5× (transformer), and compression lags generalization by order T_grok, modulated by LayerNorm.