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首页> 外文期刊>ACM Transaction on Information and System Security >Adversarial Stylometry: Circumventing Authorship Recognition to Preserve Privacy and Anonymity
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Adversarial Stylometry: Circumventing Authorship Recognition to Preserve Privacy and Anonymity

机译:对抗式笔法:规避作者身份的认可,以保护隐私和匿名性

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The use of stylometry, authorship recognition through purely linguistic means, has contributed to literary, historical, and criminal investigation breakthroughs. Existing stylometry research assumes that authors have not attempted to disguise their linguistic writing style. We challenge this basic assumption of existing stylometry methodologies and present a new area of research: adversarial stylometry. Adversaries have a devastating effect on the robustness of existing classification methods. Our work presents a framework for creating adversarial passages including obfuscation, where a subject attempts to hide her identity, and imitation, where a subject attempts to frame another subject by imitating his writing style, and translation where original passages are obfuscated with machine translation services. This research demonstrates that manual circumvention methods work very well while automated translation methods are not effective. The obfuscation method reduces the techniques' effectiveness to the level of random guessing and the imitation attempts succeed up to 67% of the time depending on the stylometry technique used. These results are more significant given the fact that experimental subjects were unfamiliar with stylometry, were not professional writers, and spent little time on the attacks. This article also contributes to the field by using human subjects to empirically validate the claim of high accuracy for four current techniques (without adversaries). We have also compiled and released two corpora of adversarial stylometry texts to promote research in this field with a total of 57 unique authors. We argue that this field is important to a multidisciplinary approach to privacy, security, and anonymity.
机译:笔迹法的使用,通过纯语言手段的作者身份识别为文学,历史和刑事调查取得了突破。现有的笔法研究假设作者没有试图掩饰其语言写作风格。我们挑战现有测速方法的基本假设,并提出了一个新的研究领域:对抗测速。对手对现有分类方法的鲁棒性具有毁灭性影响。我们的工作提供了一个框架,可用于创建对抗性段落,包括混淆(一个对象试图隐藏其身份)和模仿(一个对象试图通过模仿他的写作风格来构架另一个主题)以及翻译(其中原始段落被机器翻译服务所混淆)。这项研究表明,手动规避方法非常有效,而自动翻译方法则无效。混淆方法将技术的有效性降低到随机猜测的程度,并且根据所使用的笔法,模仿尝试最多可以在67%的时间内成功。考虑到以下事实,这些结果更为有意义:实验对象不熟悉笔法,不是专业作家,并且很少花时间进行攻击。本文还通过使用人类受试者对四种当前技术(无对手)的高精度要求进行了实证研究,为该领域做出了贡献。我们还编辑并发布了两个对抗式测绘文本集,以促进该领域的研究,共有57位独特的作者。我们认为该领域对于隐私,安全性和匿名性的多学科方法很重要。

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