The Impact of an Adversary in a Language Model

Zhengzhong Liang, G. Ditzler
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Abstract

Neural networks have been quite successful at complex classification tasks. Furthermore, they have the ability to learn information from a large volume of data. Unfortunately, not all of the sources available are secure and there is a possibility that an adversary in the environment has the malicious intention to poison a training dataset to cause the neural network to have a poor generalization error. Therefore, it is important to observe how susceptible a neural network is to the free parameters (i.e., gradient thresholds, hidden layer size, etc.) and the availability of adversarial data. In this work, we study the impact of an adversary for language models with Long Short-Term Memory (LSTM) networks and its configurations. We experimented with the Penn Tree Bank (PTB) dataset and adversarial text that was sampled from works in a different era. Our results show that there are several effective ways to poison such an LSTM language model. Furthermore, from our experiments, we are able to provide suggestions about the steps that can be taken to reduce the impact of such attacks.
语言模型中对手的影响
神经网络在复杂的分类任务上已经相当成功。此外,他们有能力从大量数据中学习信息。不幸的是,并非所有可用的数据源都是安全的,并且环境中的对手有可能恶意地毒害训练数据集,从而导致神经网络具有较差的泛化误差。因此,观察神经网络对自由参数(即梯度阈值、隐藏层大小等)和对抗数据的可用性有多敏感是很重要的。在这项工作中,我们研究了对手对具有长短期记忆(LSTM)网络的语言模型及其配置的影响。我们用Penn Tree Bank (PTB)数据集和从不同时代的作品中采样的对抗性文本进行了实验。我们的结果表明,有几种有效的方法可以毒害这样的LSTM语言模型。此外,从我们的实验中,我们能够提供关于可以采取的步骤的建议,以减少此类攻击的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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