深度学习有毒数据攻击检测

Henry Chacón, S. Silva, P. Rad
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引用次数: 19

摘要

深度神经网络广泛应用于各行各业。像迁移学习这样的技术可以使神经网络在某些任务上进行预训练,然后再训练以适应新的任务,通常需要的数据要少得多。用户可以访问预训练的模型参数和模型定义以及测试数据,但对训练数据的访问要么有限,要么只是其中的一个子集。这对于系统关键型应用程序是有风险的,因为在训练阶段可以恶意地包含对抗性信息来攻击系统。确定模型中是否存在攻击和攻击级别是一项挑战。在本文中,我们以CNN模型为例,使用MNIST数据集作为测试,提供了对抗性攻击训练数据如何增加模型参数边界的证据。这种扩展是由于有毒数据的新特征被添加到训练数据中。从网络学习到的特征空间来解决问题,提供了它们与模型在训练阶段所取的可能参数之间的关系。提出了一种算法,通过比较最大熵原理和变分推理方法估计的模型的中间层参数分布边界,来判断给定网络在训练中是否受到攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Poison Data Attack Detection
Deep neural networks are widely used in many walks of life. Techniques such as transfer learning enable neural networks pre-trained on certain tasks to be retrained for a new duty, often with much less data. Users have access to both pre-trained model parameters and model definitions along with testing data but have either limited access to training data or just a subset of it. This is risky for system-critical applications, where adversarial information can be maliciously included during the training phase to attack the system. Determining the existence and level of attack in a model is challenging. In this paper, we present evidence on how adversarially attacking training data increases the boundary of model parameters using as an example of a CNN model and the MNIST data set as a test. This expansion is due to new characteristics of the poisonous data that are added to the training data. Approaching the problem from the feature space learned by the network provides a relation between them and the possible parameters taken by the model on the training phase. An algorithm is proposed to determine if a given network was attacked in the training by comparing the boundaries of parameters distribution on intermediate layers of the model estimated by using the Maximum Entropy Principle and the Variational inference approach.
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