首页> 美国卫生研究院文献>Frontiers in Psychiatry >Introducing Machine Learning to Detect Personality Faking-Good in a Male Sample: A New Model Based on Minnesota Multiphasic Personality Inventory-2 Restructured Form Scales and Reaction Times
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Introducing Machine Learning to Detect Personality Faking-Good in a Male Sample: A New Model Based on Minnesota Multiphasic Personality Inventory-2 Restructured Form Scales and Reaction Times

机译:引入机器学习来检测男性样本中的人格伪善:基于明尼苏达州多相人格问卷2重组形式量表和反应时间的新模型

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>Background and Purpose. The use of machine learning (ML) models in the detection of malingering has yielded encouraging results, showing promising accuracy levels. We investigated the possible application of this methodology when trained on behavioral features, such as response time (RT) and time pressure, to identify faking behavior in self-report personality questionnaires. To do so, we reintroduced the article of Roma et al. (2018), which highlighted that RTs and time pressure are useful variables in the detection of faking; we then extended the number of participants and applied an ML analysis. >Materials and Methods. The sample was composed of 175 subjects, of whom all were graduates (having completed at least 17 years of instruction), male, and Caucasian. Subjects were randomly assigned to four groups: honest speeded, faking-good speeded, honest unspeeded, and faking-good unspeeded. A software version of the Minnesota Multiphasic Personality Inventory-2 Restructured Form (MMPI-2-RF) was administered. >Results. Results indicated that ML algorithms reached very high accuracies (around 95%) in detecting malingerers when subjects are instructed to respond under time pressure. The classifiers’ performance was lower when the subjects responded with no time restriction to the MMPI-2-RF items, with accuracies ranging from 75% to 85%. Further analysis demonstrated that T-scores of validity scales are ineffective to detect fakers when participants were not under temporal pressure (accuracies 55–65%), whereas temporal features resulted to be more useful (accuracies 70–75%). By contrast, temporal features and T-scores of validity scales are equally effective in detecting fakers when subjects are under time pressure (accuracies higher than 90%). >Discussion. To conclude, results demonstrated that ML techniques are extremely valuable and reach high performance in detecting fakers in self-report personality questionnaires over more the traditional psychometric techniques. Validity scales MMPI-2-RF manual criteria are very poor in identifying under-reported profiles. Moreover, temporal measures are useful tools in distinguishing honest from dishonest responders, especially in a no time pressure condition. Indeed, time pressure brings out malingerers in clearer way than does no time pressure condition.
机译:>背景和目的。在机器学习错误检测中使用机器学习(ML)模型产生了令人鼓舞的结果,显示出令人满意的准确性水平。我们调查了这种方法在接受行为特征(例如响应时间(RT)和时间压力)训练后,在自我报告人格问卷中识别伪造行为的可能应用。为此,我们重新引入了Roma等人的文章。 (2018),强调RTs和时间压力是检测伪造品的有用变量;然后,我们扩大了参与者的数量并应用了机器学习分析。 >材料与方法。该样本由175名受试者组成,其中所有都是研究生(至少完成了17年的教学),男性和白种人。受试者被随机分为四组:诚实的速度,假善的速度,诚实的不加速和假善的速度。管理了明尼苏达州多相人格量表2重组表(MMPI-2-RF)的软件版本。 >结果。结果表明,当指示受试对象在时间压力下做出反应时,机器学习算法在检测恶意攻击者方面达到了很高的准确性(约95%)。当受试者对MMPI-2-RF项目无时间限制地回答时,分类器的性能会降低,其准确度在75%至85%之间。进一步的分析表明,当参与者不在时空压力下(准确性为55-65%)时,有效性量表的T评分无法有效检测假货,而时态特征则更为有用(准确性为70-75%)。相比之下,当受试者处于时间压力下(准确性高于90%)时,有效性量表的时间特征和T分数在检测假货方面同样有效。 >讨论。总而言之,结果表明,机器学习技术比传统的心理测量技术具有极高的价值,并且在自我报告人格问卷中检测伪造者方面具有很高的性能。有效性量表MMPI-2-RF手动标准在识别报告不足的配置文件方面非常差。而且,时间量度是区分诚实和不诚实响应者的有用工具,尤其是在没有时间压力的情况下。确实,与没有时间压力的情况相比,时间压力以更清晰的方式淘汰了恶意分子。

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