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PDF] Uniform convergence may be unable to explain generalization in deep learning | Semantic Scholar
arxiv on Twitter: "Uniform convergence may be unable to explain generalization in deep learning. https://t.co/ZLszW6zlqd https://t.co/u1p0lmBwXW" / Twitter
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Uniform convergence may be unable to explain generalization in deep learning (NeurIPS19 oral paper) - YouTube
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PDF] Uniform convergence may be unable to explain generalization in deep learning | Semantic Scholar
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PDF] Novel Concentration of Measure Bounds with Applications to Fairness in Machine Learning | Semantic Scholar
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PDF] Uniform convergence may be unable to explain generalization in deep learning | Semantic Scholar
![Maximilian Kasy on Twitter: "Why is deep learning - with highly overparametrized models - so effective, contrary to what classical learning theory would suggest? How can interpolating models predict well, even when Maximilian Kasy on Twitter: "Why is deep learning - with highly overparametrized models - so effective, contrary to what classical learning theory would suggest? How can interpolating models predict well, even when](https://pbs.twimg.com/media/Foxi7RoXgAcEyL9.png)