Can overfitted deep neural networks in adversarial training generalize? – An approximation viewpoint poster
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Release: March 01, 2024
Runtime: 52 min
Status: Released
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Can overfitted deep neural networks in adversarial training generalize? – An approximation viewpoint
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Can overfitted deep neural networks in adversarial training generalize? – An approximation viewpoint

2024 52 min
Overview

In this talk, I will discuss whether overfitted DNNs in adversarial training can generalize from an approximation viewpoint. We prove by construction the existence of infinitely many adversarial training classifiers on over-parameterized DNNs that obtain arbitrarily small adversarial training error (overfitting), whereas achieving good robust generalization error under certain conditions concerning the data quality, well separated, and perturbation level. This construction is optimal and thus points out the fundamental limits of DNNs under adversarial training with statistical guarantees. Part of this talk comes from our recent work.

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Documentary Crime
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  • United Kingdom
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Cast
Fanghui Liu
Himself
Engineering Research Building
Room 514
Yuchen Zeng
Crew
Fanghui Liu
Producer
Fanghui Liu
Director
Fanghui Liu
Writer
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