We developed a supervised machine learning classifier to identify faking good by analyzing item response patterns of a Big Five personality self‐report. We used a between‐subject design, dividing participants (N = 548) into two groups and manipulated their faking behavior via instructions given prior to administering the self‐report. We implemented a simple classifier based on the Lie scale's cutoff score and several machine learning models fitted either to the personality scale scores or to the items response patterns. Results shown that the best machine learning classifier—based on the XGBoost algorithm and fitted to the item responses—was better at detecting faked profiles than the Lie scale classifier
This study will examine the utility of Kuncel & Borneman\u27s (2007) novel approach to faking detect...
People are not very good at detecting lies, which may explain why they refrain from accusing others ...
This article describes how a multilevel logistic regression (MLR) approach to assessing person fit c...
The current study was designed to develop a supervised machine learning classifier to identify fakin...
Background and Purpose. The use of machine learning (ML) models in the detection of malingering has ...
Background and Purpose. The use of machine learning (ML) models in the detection of malingering has ...
The online social network is the largest network, more than 4 billion users use social media and wit...
Deliberate attempts to portray oneself in an unrealistic manner are commonly encountered in the admi...
This study presents a new method for developing faking detection scales based on idiosyncratic item-...
There is a growing number of people who hold accounts on social media platforms (SMPs) but hide thei...
Malingered responses to psychological testing are frequent when monetary incentives or other forms o...
Personality aims at capturing stable individual characteristics, typically measurable in quantitativ...
Although not universally accepted, much of the field has converged upon the Five Factor Model (FFM) ...
In this chapter, we present a review of the behavioral lie detection tools currently available in th...
Research has demonstrated that people can and often do consciously manipulate scores on personality...
This study will examine the utility of Kuncel & Borneman\u27s (2007) novel approach to faking detect...
People are not very good at detecting lies, which may explain why they refrain from accusing others ...
This article describes how a multilevel logistic regression (MLR) approach to assessing person fit c...
The current study was designed to develop a supervised machine learning classifier to identify fakin...
Background and Purpose. The use of machine learning (ML) models in the detection of malingering has ...
Background and Purpose. The use of machine learning (ML) models in the detection of malingering has ...
The online social network is the largest network, more than 4 billion users use social media and wit...
Deliberate attempts to portray oneself in an unrealistic manner are commonly encountered in the admi...
This study presents a new method for developing faking detection scales based on idiosyncratic item-...
There is a growing number of people who hold accounts on social media platforms (SMPs) but hide thei...
Malingered responses to psychological testing are frequent when monetary incentives or other forms o...
Personality aims at capturing stable individual characteristics, typically measurable in quantitativ...
Although not universally accepted, much of the field has converged upon the Five Factor Model (FFM) ...
In this chapter, we present a review of the behavioral lie detection tools currently available in th...
Research has demonstrated that people can and often do consciously manipulate scores on personality...
This study will examine the utility of Kuncel & Borneman\u27s (2007) novel approach to faking detect...
People are not very good at detecting lies, which may explain why they refrain from accusing others ...
This article describes how a multilevel logistic regression (MLR) approach to assessing person fit c...