Adversarial Watermarking Transformer: Towards Tracing Text Provenance with Data Hiding

Sahar Abdelnabi, Mario Fritz
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引用次数: 62

Abstract

Recent advances in natural language generation have introduced powerful language models with high-quality output text. However, this raises concerns about the potential misuse of such models for malicious purposes. In this paper, we study natural language watermarking as a defense to help better mark and trace the provenance of text. We introduce the Adversarial Watermarking Transformer (AWT) with a jointly trained encoder-decoder and adversarial training that, given an input text and a binary message, generates an output text that is unobtrusively encoded with the given message. We further study different training and inference strategies to achieve minimal changes to the semantics and correctness of the input text.AWT is the first end-to-end model to hide data in text by automatically learning -without ground truth- word substitutions along with their locations in order to encode the message. We empirically show that our model is effective in largely preserving text utility and decoding the watermark while hiding its presence against adversaries. Additionally, we demonstrate that our method is robust against a range of attacks.
对抗性水印转换器:用数据隐藏跟踪文本来源
自然语言生成的最新进展引入了具有高质量输出文本的强大语言模型。然而,这引起了对这些模型可能被恶意滥用的担忧。在本文中,我们研究了自然语言水印作为一种防御手段,以帮助更好地标记和跟踪文本的来源。我们引入了具有联合训练的编码器-解码器和对抗训练的对抗性水印转换器(AWT),该转换器给定输入文本和二进制消息,生成输出文本,该文本与给定消息进行了不显眼的编码。我们进一步研究了不同的训练和推理策略,以实现对输入文本的语义和正确性的最小变化。AWT是第一个端到端模型,它通过自动学习(没有基础事实)单词替换及其位置来隐藏文本中的数据,以便对消息进行编码。我们的经验表明,我们的模型在很大程度上有效地保留了文本效用和解码水印,同时隐藏了它对对手的存在。此外,我们证明了我们的方法对一系列攻击具有鲁棒性。
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