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A Closer Look at Memorization in Deep Networks

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abstract

We examine the role of memorization in deep learning, drawing connections to capacity, generalization, and adversarial robustness. While deep networks are capable of memorizing noise data, our results suggest that they tend to prioritize learning simple patterns first. In our experiments, we expose qualitative differences in gradient-based optimization of deep neural networks (DNNs) on noise vs. real data. We also demonstrate that for appropriately tuned explicit regularization (e.g., dropout) we can degrade DNN training performance on noise datasets without compromising generalization on real data. Our analysis suggests that the notions of effective capacity which are dataset independent are unlikely to explain the generalization performance of deep networks when trained with gradient based methods because training data itself plays an important role in determining the degree of memorization.

fields

cs.LG 1

years

2025 1

verdicts

UNVERDICTED 1

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An overview of condensation phenomenon in deep learning

cs.LG · 2025-04-13 · unverdicted · novelty 2.0

Neural networks exhibit condensation of neurons into clusters with similar outputs whose number increases monotonically during training, facilitated by small initializations or dropout, providing insights into generalization and reasoning.

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  • An overview of condensation phenomenon in deep learning cs.LG · 2025-04-13 · unverdicted · none · ref 1 · internal anchor

    Neural networks exhibit condensation of neurons into clusters with similar outputs whose number increases monotonically during training, facilitated by small initializations or dropout, providing insights into generalization and reasoning.