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SMILE: Self-Distilled MIxup for Efficient Transfer LEarning

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arxiv 2103.13941 v1 pith:NJ7QBCU2 submitted 2021-03-25 cs.LG

SMILE: Self-Distilled MIxup for Efficient Transfer LEarning

classification cs.LG
keywords mixupfeaturesmilelearningmixedsamplestransferin-between
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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To improve the performance of deep learning, mixup has been proposed to force the neural networks favoring simple linear behaviors in-between training samples. Performing mixup for transfer learning with pre-trained models however is not that simple, a high capacity pre-trained model with a large fully-connected (FC) layer could easily overfit to the target dataset even with samples-to-labels mixed up. In this work, we propose SMILE - Self-Distilled Mixup for EffIcient Transfer LEarning. With mixed images as inputs, SMILE regularizes the outputs of CNN feature extractors to learn from the mixed feature vectors of inputs (sample-to-feature mixup), in addition to the mixed labels. Specifically, SMILE incorporates a mean teacher, inherited from the pre-trained model, to provide the feature vectors of input samples in a self-distilling fashion, and mixes up the feature vectors accordingly via a novel triplet regularizer. The triple regularizer balances the mixup effects in both feature and label spaces while bounding the linearity in-between samples for pre-training tasks. Extensive experiments have been done to verify the performance improvement made by SMILE, in comparisons with a wide spectrum of transfer learning algorithms, including fine-tuning, L2-SP, DELTA, and RIFLE, even with mixup strategies combined. Ablation studies show that the vanilla sample-to-label mixup strategies could marginally increase the linearity in-between training samples but lack of generalizability, while SMILE significantly improve the mixup effects in both label and feature spaces with both training and testing datasets. The empirical observations backup our design intuition and purposes.

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  1. Beyond Dark Knowledge: Mixup-Based Distillation for Reliable Predictions

    cs.CV 2026-06 unverdicted novelty 5.0

    Mixup applied only to the student during KD induces independent linearity acquisition that reduces overconfidence by an order of magnitude while improving accuracy, with calibration transferring separately from accuracy.