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Applying automatic text-based detection of deceptive language to police reports: Extracting behavioral patterns from a multi-step classification model to understand how we lie to the police

机译:将基于欺骗性语言的基于文本的自动检测应用于警察报告:从多步骤分类模型中提取行为模式,以了解我们对警察的谎言

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Filing a false police report is a crime that has dire consequences on both the individual and the system. In fact, it may be charged as a misdemeanor or a felony. For the society, a false report results in the loss of police resources and contamination of police databases used to carry out investigations and assessing the risk of crime in a territory. In this research, we present VeriPol, a model for the detection of false robbery reports based solely on their text. This tool, developed in collaboration with the Spanish National Police, combines Natural Language Processing and Machine Learning methods in a decision support system that provides police officers the probability that a given report is false. VeriPol has been tested on more than 1000 reports from 2015 provided by the Spanish National Police. Empirical results show that it is extremely effective in discriminating between false and true reports with a success rate of more than 91%, improving by more than 15% the accuracy of expert police officers on the same dataset. The underlying classification model can be analysed to extract patterns and insights showing how people lie to the police (as well as how to get away with false reporting). In general, the more details provided in the report, the more likely it is to be honest. Finally, a pilot study carried out in June 2017 has demonstrated the usefulness of VeriPol on the field. (C) 2018 Elsevier B.V. All rights reserved.
机译:提交虚假的警察报告是对个人和系统都造成严重后果的犯罪。实际上,它可能被指控为轻罪或重罪。对于社会而言,虚假报告会导致警察资源的损失,以及用于进行调查和评估某一地区犯罪风险的警察数据库的污染。在这项研究中,我们介绍了VeriPol,这是一种仅基于虚假抢劫报告的文本检测模型。该工具与西班牙国家警察合作开发,在决策支持系统中结合了自然语言处理和机器学习方法,可为警察提供给定报告为假的可能性。从2015年起,VeriPol已经接受了西班牙国家警察提供的1000多份报告的测试。实证结果表明,它在区分虚假和真实报告方面非常有效,成功率超过91%,在同一数据集上将专业警官的准确性提高了15%以上。可以对基础分类模型进行分析,以提取模式和洞察力,以显示人们如何向警察撒谎(以及如何逃避虚假举报)。通常,报告中提供的详细信息越多,诚实的可能性就越大。最后,2017年6月进行的一项试点研究证明了VeriPol在现场的有用性。 (C)2018 Elsevier B.V.保留所有权利。

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