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arxiv: 2309.04644 · v3 · pith:LTYWVBHG · submitted 2023-09-09 · cs.LG

Towards Understanding Neural Collapse: The Effects of Batch Normalization and Weight Decay

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classification cs.LG
keywords neuralcollapselast-layerlosslowerbatchdecaydemonstrate
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Neural Collapse (NC) is a geometric structure recently observed at the terminal phase of training deep neural networks, which states that last-layer feature vectors for the same class would "collapse" to a single point, while features of different classes become equally separated. We demonstrate that batch normalization (BN) and weight decay (WD) critically influence the emergence of NC. In the near-optimal loss regime, we establish an asymptotic lower bound on the emergence of NC that depends only on the WD value, training loss, and the presence of last-layer BN. Our experiments substantiate theoretical insights by showing that models demonstrate a stronger presence of NC with BN, appropriate WD values, lower loss, and lower last-layer feature norm. Our findings offer a novel perspective in studying the role of BN and WD in shaping neural network features.

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