论文标题

谎言检测算法吸引了很少的用户,但大大提高了指控率

Lie detection algorithms attract few users but vastly increase accusation rates

论文作者

von Schenk, Alicia, Klockmann, Victor, Bonnefon, Jean-François, Rahwan, Iyad, Köbis, Nils

论文摘要

人们不是很擅长检测谎言,这可以解释为什么他们避免指责他人撒谎,因为既有指控者和被告人都涉及虚假指控的社会成本。在这里,我们考虑了通过人工智能支持的谎言检测算法的可用性,如何破坏这种社会平衡。人们会选择使用比人类表现更好的谎言检测算法吗?我们建立了一个机器学习分类器,该分类器的准确性(67 \%)明显优于人类的准确性(50 \%),并进行了激励性的Lie-检测实验,在该实验中,我们测量了参与者使用算法的倾向,以及对这种使用对指控率的影响。我们发现,少数选择使用该算法的人(33 \%)会大大提高其指控率(从基线条件下的25%\%从算法标记为谎言时,最高为86%)。他们提出了更多的错误指控(增长18pp),但与此同时,该组中静止的谎言的可能性要低得多(36pp降低)。我们考虑使用谎言检测算法和这些算法的社会含义的个人动机。

People are not very good at detecting lies, which may explain why they refrain from accusing others of lying, given the social costs attached to false accusations - both for the accuser and the accused. Here we consider how this social balance might be disrupted by the availability of lie-detection algorithms powered by Artificial Intelligence. Will people elect to use lie detection algorithms that perform better than humans, and if so, will they show less restraint in their accusations? We built a machine learning classifier whose accuracy (67\%) was significantly better than human accuracy (50\%) in a lie-detection task and conducted an incentivized lie-detection experiment in which we measured participants' propensity to use the algorithm, as well as the impact of that use on accusation rates. We find that the few people (33\%) who elect to use the algorithm drastically increase their accusation rates (from 25\% in the baseline condition up to 86% when the algorithm flags a statement as a lie). They make more false accusations (18pp increase), but at the same time, the probability of a lie remaining undetected is much lower in this group (36pp decrease). We consider individual motivations for using lie detection algorithms and the social implications of these algorithms.

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