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Machine learning / Learning / Artificial intelligence / Artificial neural networks / Computational neuroscience / Autoencoder / Unsupervised learning / Adversarial machine learning / Statistical classification / Deep learning / Classifier / Softmax function
Date: 2017-12-30 21:51:58
Machine learning
Learning
Artificial intelligence
Artificial neural networks
Computational neuroscience
Autoencoder
Unsupervised learning
Adversarial machine learning
Statistical classification
Deep learning
Classifier
Softmax function

MagNet: a Two-Pronged Defense against Adversarial Examples

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