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Discerning truth from deception: Human judgments and automation efforts

机译:从欺骗中辨别真相:人为判断和自动化工作

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Recent improvements in effectiveness and accuracy of the emerging field of automated deception detection and the associated potential of language technologies have triggered increased interest in mass media and general public. Computational tools capable of alerting users to potentially deceptive content in computer–mediated messages are invaluable for supporting undisrupted, computer–mediated communication and information practices, credibility assessment and decision–making. The goal of this ongoing research is to inform creation of such automated capabilities. In this study we elicit a sample of 90 computer–mediated personal stories with varying levels of deception. Each story has 10 associated human deception level judgments, confidence scores, and explanations. In total, 990 unique respondents participated in the study. Three approaches are taken to the data analysis of the sample: human judges, linguistic detection cues, and machine learning. Comparable to previous research results, human judgments achieve 50–63 percent success rates, depending on what is considered deceptive. Actual deception levels negatively correlate with their confident judgment as being deceptive ( r = -0.35, df = 88, ρ = 0.008). The highest-performing machine learning algorithms reach 65 percent accuracy. Linguistic cues are extracted, calculated, and modeled with logistic regression, but are found not to be significant predictors of deception level, confidence score, or an authors’ ability to fool a reader. We address the associated challenges with error analysis. The respondents’ stories and explanations are manually content–analyzed and result in a faceted deception classification (theme, centrality, realism, essence, self–distancing) and a stated perceived cue typology. Deception detection remains novel, challenging, and important in natural language processing, machine learning, and the broader library information science and technology community.
机译:新兴的自动欺骗检测领域的有效性和准确性以及语言技术的相关潜力的最新改进,引起了大众媒体和公众的越来越多的兴趣。能够提醒用户注意计算机介导的消息中潜在的欺骗性内容的计算工具,对于支持不间断的计算机介导的交流和信息实践,信誉评估和决策制定具有无价的作用。正在进行的研究的目的是告知此类自动功能的创建。在这项研究中,我们得出了90个具有不同欺骗水平的计算机介导的个人故事的样本。每个故事都有10个相关的人类欺骗级别的判断,置信度得分和解释。共有990位独特的受访者参加了这项研究。对样本的数据分析采用三种方法:人工判断,语言检测提示和机器学习。与以前的研究结果相比,人类的判断获得了50-63%的成功率,这取决于被认为具有欺骗性的事物。实际欺骗水平与其自信判断具有欺骗性负相关(r = -0.35,df = 88,ρ= 0.008)。最高性能的机器学习算法可达到65%的准确性。语言提示是通过逻辑回归提取,计算和建模的,但发现它们并不是欺骗程度,置信度得分或作者愚弄读者的能力的重要预测指标。我们通过错误分析解决相关的挑战。受访者的故事和解释均经过手动内容分析,从而得出了多面的欺骗分类(主题,中心性,现实主义,本质,自我距离)和明确的提示类型。欺骗检测在自然语言处理,机器学习和更广泛的图书馆信息科学与技术界中仍然是新颖,具有挑战性且重要的。

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