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ScanMix: Learning from Severe Label Noise via Semantic Clustering and Semi-Supervised Learning

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arxiv 2103.11395 v3 pith:WH753IO4 submitted 2021-03-21 cs.CV cs.LG

ScanMix: Learning from Severe Label Noise via Semantic Clustering and Semi-Supervised Learning

classification cs.CV cs.LG
keywords labelnoisescanmixsemanticclusteringlearningresultssevere
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a new training algorithm, ScanMix, that explores semantic clustering and semi-supervised learning (SSL) to allow superior robustness to severe label noise and competitive robustness to non-severe label noise problems, in comparison to the state of the art (SOTA) methods. ScanMix is based on the expectation maximisation framework, where the E-step estimates the latent variable to cluster the training images based on their appearance and classification results, and the M-step optimises the SSL classification and learns effective feature representations via semantic clustering. We present a theoretical result that shows the correctness and convergence of ScanMix, and an empirical result that shows that ScanMix has SOTA results on CIFAR-10/-100 (with symmetric, asymmetric and semantic label noise), Red Mini-ImageNet (from the Controlled Noisy Web Labels), Clothing1M and WebVision. In all benchmarks with severe label noise, our results are competitive to the current SOTA.

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