请注意:您的注意调查研究中的检查问题可以自动回答

Weiping Pei, Arthur Mayer, Kaylynn Tu, Chuan Yue
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引用次数: 14

摘要

注意力检查问题已成为流行众包平台发布的在线调查中常用的问题,作为过滤注意力不集中的受访者并提高数据质量的关键机制。然而,很少有研究考虑到这种重要的质量控制机制的漏洞,它可以允许攻击者(包括不负责任和恶意的受访者)自动回答注意力检查问题,以有效地实现他们的目标。在本文中,我们进行了第一次研究来调查此类漏洞,并证明攻击者可以利用深度学习技术自动通过注意力检查问题。我们提出了一种具有具体模型的攻击框架AC-EasyPass,该框架结合了卷积神经网络和加权特征重构,可以轻松通过注意力检查问题。我们构建了由原始问题和增强问题组成的第一个注意力检查问题数据集,并证明了AC-EasyPass的有效性。我们探讨了两种简单的防御方法,添加对抗性句子和添加错别字,为调查设计师减轻AC-EasyPass带来的风险;然而,由于技术和可用性方面的限制,这些方法是脆弱的,强调了防御的挑战性。我们希望我们的工作将引起研究界对开发更强大的注意力检查机制的足够关注。更广泛地说,我们的工作旨在促使研究界认真考虑恶意使用机器学习技术对众包和社会计算的质量、有效性和可信度所带来的新风险。
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Attention Please: Your Attention Check Questions in Survey Studies Can Be Automatically Answered
Attention check questions have become commonly used in online surveys published on popular crowdsourcing platforms as a key mechanism to filter out inattentive respondents and improve data quality. However, little research considers the vulnerabilities of this important quality control mechanism that can allow attackers including irresponsible and malicious respondents to automatically answer attention check questions for efficiently achieving their goals. In this paper, we perform the first study to investigate such vulnerabilities, and demonstrate that attackers can leverage deep learning techniques to pass attention check questions automatically. We propose AC-EasyPass, an attack framework with a concrete model, that combines convolutional neural network and weighted feature reconstruction to easily pass attention check questions. We construct the first attention check question dataset that consists of both original and augmented questions, and demonstrate the effectiveness of AC-EasyPass. We explore two simple defense methods, adding adversarial sentences and adding typos, for survey designers to mitigate the risks posed by AC-EasyPass; however, these methods are fragile due to their limitations from both technical and usability perspectives, underlining the challenging nature of defense. We hope our work will raise sufficient attention of the research community towards developing more robust attention check mechanisms. More broadly, our work intends to prompt the research community to seriously consider the emerging risks posed by the malicious use of machine learning techniques to the quality, validity, and trustworthiness of crowdsourcing and social computing.
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