Dropout Attacks

September 04, 2023 ยท Declared Dead ยท ๐Ÿ› IEEE Symposium on Security and Privacy

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Authors Andrew Yuan, Alina Oprea, Cheng Tan arXiv ID 2309.01614 Category cs.LG: Machine Learning Cross-listed cs.CR Citations 3 Venue IEEE Symposium on Security and Privacy Last Checked 3 months ago
Abstract
Dropout is a common operator in deep learning, aiming to prevent overfitting by randomly dropping neurons during training. This paper introduces a new family of poisoning attacks against neural networks named DROPOUTATTACK. DROPOUTATTACK attacks the dropout operator by manipulating the selection of neurons to drop instead of selecting them uniformly at random. We design, implement, and evaluate four DROPOUTATTACK variants that cover a broad range of scenarios. These attacks can slow or stop training, destroy prediction accuracy of target classes, and sabotage either precision or recall of a target class. In our experiments of training a VGG-16 model on CIFAR-100, our attack can reduce the precision of the victim class by 34.6% (from 81.7% to 47.1%) without incurring any degradation in model accuracy
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