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advrankAdversarial Ranking Attack and Defense, ECCV, 2020.
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tulipScaleable input gradient regularization
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FeatureScatterFeature Scattering Adversarial Training
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adversarial-recommender-systems-surveyThe goal of this survey is two-fold: (i) to present recent advances on adversarial machine learning (AML) for the security of RS (i.e., attacking and defense recommendation models), (ii) to show another successful application of AML in generative adversarial networks (GANs) for generative applications, thanks to their ability for learning (high-…
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NlpaugData augmentation for NLP
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