Kleinberg Bennett, van der Toolen Yaloe, Vrij Aldert, Arntz Arnoud, Verschuere Bruno
Department of Psychology University of Amsterdam Amsterdam The Netherlands.
Department of Psychology University of Portsmouth Portsmouth UK.
Appl Cogn Psychol. 2018 May-Jun;32(3):354-366. doi: 10.1002/acp.3407. Epub 2018 Apr 2.
Recently, verbal credibility assessment has been extended to the detection of deceptive intentions, the use of a model statement, and predictive modeling. The current investigation combines these 3 elements to detect deceptive intentions on a large scale. Participants read a model statement and wrote a truthful or deceptive statement about their planned weekend activities (Experiment 1). With the use of linguistic features for machine learning, more than 80% of the participants were classified correctly. Exploratory analyses suggested that liars included more person and location references than truth-tellers. Experiment 2 examined whether these findings replicated on independent-sample data. The classification accuracies remained well above chance level but dropped to 63%. Experiment 2 corroborated the finding that liars' statements are richer in location and person references than truth-tellers' statements. Together, these findings suggest that liars may over-prepare their statements. Predictive modeling shows promise as an automated veracity assessment approach but needs validation on independent data.
最近,言语可信度评估已扩展到对欺骗意图的检测、模型陈述的使用以及预测建模。当前的调查结合了这三个要素,以大规模检测欺骗意图。参与者阅读一份模型陈述,并就他们计划的周末活动撰写一份真实或欺骗性的陈述(实验1)。通过使用语言特征进行机器学习,超过80%的参与者被正确分类。探索性分析表明,说谎者比说真话者包含更多的人物和地点提及。实验2检验了这些发现是否能在独立样本数据上得到重复。分类准确率仍远高于机会水平,但降至63%。实验2证实了这一发现,即说谎者的陈述比说真话者的陈述在地点和人物提及方面更丰富。总之,这些发现表明说谎者可能会过度准备他们的陈述。预测建模作为一种自动真实性评估方法显示出前景,但需要在独立数据上进行验证。