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Computational neuroscience / Chemistry / Applied mathematics / Artificial neural networks / Phase transitions / Statistics / Scientific modeling / Design of experiments / Deep learning / Distillation / Outlier / Surrogate model
Date: 2017-05-14 02:41:14
Computational neuroscience
Chemistry
Applied mathematics
Artificial neural networks
Phase transitions
Statistics
Scientific modeling
Design of experiments
Deep learning
Distillation
Outlier
Surrogate model

A full version of this paper is available at https://papernot.fr/files/extending-distillation.pdf Poster: Extending Defensive Distillation Nicolas Papernot and Patrick McDaniel Pennsylvania State University {ngp5056,mcd

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