Towards Stronger Adversarial Baselines Through Human-AI Collaboration

Wencong You, Daniel Lowd
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引用次数: 1

Abstract

Natural language processing (NLP) systems are often used for adversarial tasks such as detecting spam, abuse, hate speech, and fake news. Properly evaluating such systems requires dynamic evaluation that searches for weaknesses in the model, rather than a static test set. Prior work has evaluated such models on both manually and automatically generated examples, but both approaches have limitations: manually constructed examples are time-consuming to create and are limited by the imagination and intuition of the creators, while automatically constructed examples are often ungrammatical or labeled inconsistently. We propose to combine human and AI expertise in generating adversarial examples, benefiting from humans’ expertise in language and automated attacks’ ability to probe the target system more quickly and thoroughly. We present a system that facilitates attack construction, combining human judgment with automated attacks to create better attacks more efficiently. Preliminary results from our own experimentation suggest that human-AI hybrid attacks are more effective than either human-only or AI-only attacks. A complete user study to validate these hypotheses is still pending.
通过人类与人工智能的合作实现更强的对抗基线
自然语言处理(NLP)系统通常用于对抗性任务,如检测垃圾邮件、滥用、仇恨言论和假新闻。正确地评估这样的系统需要动态评估,寻找模型中的弱点,而不是静态测试集。之前的工作已经在手动和自动生成的示例上评估了这些模型,但这两种方法都有局限性:手动构建的示例创建起来非常耗时,并且受创建者的想象力和直觉的限制,而自动构建的示例通常不符合语法或标记不一致。我们建议将人类和人工智能的专业知识结合起来,生成对抗性示例,受益于人类在语言方面的专业知识和自动攻击的能力,从而更快、更彻底地探测目标系统。我们提出了一个便于攻击构建的系统,将人工判断与自动攻击相结合,以更有效地创建更好的攻击。我们自己实验的初步结果表明,人类-人工智能混合攻击比纯人类或纯人工智能攻击更有效。验证这些假设的完整用户研究仍有待完成。
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