基于变压器的神经网络隐私保护

Jiaqi Lang, Linjing Li, Weiyun Chen, D. Zeng
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引用次数: 1

摘要

随着神经网络的巨大成功,提高基于神经网络的应用系统的信息安全具有重要意义。本文研究了一种攻击者窃听由编码器层计算的中间表示并试图恢复输入文本的私有信息的场景。我们提出了一种新的指标来评估编码器的隐私保护能力,并对基于transformer的编码器进行了评估,这是首次对基于transformer的神经网络进行隐私研究。我们还提出了一种对抗训练方法来增强基于transformer的神经网络的隐私性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Protection in Transformer-based Neural Network
With the great success of neural networks, it is important to improve the information security of application systems based on them. This paper investigates a scenario where an attacker eavesdrops the intermediate representation computed by the encoder layers and tries to recover the private information of the input text. We propose a new metric to evaluate the encoder’s ability to protect privacy and evaluate the Transformer-based encoder, which is the first privacy research conducted on Transformer-based neural networks. We also propose an adversarial training method to enhance the privacy of Transformer-based neural networks.
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