| Literature DB >> 35632357 |
David Delgado-Gómez1, Antonio Eduardo Masó-Besga2, David Aguado3,4, Victor J Rubio5, Aaron Sujar6, Sofia Bayona6,7.
Abstract
Obtaining accurate and objective assessments of an individual's personality is vital in many areas including education, medicine, sports and management. Currently, most personality assessments are conducted using scales and questionnaires. Unfortunately, it has been observed that both scales and questionnaires present various drawbacks. Their limitations include the lack of veracity in the answers, limitations in the number of times they can be administered, or cultural biases. To solve these problems, several articles have been published in recent years proposing the use of movements that participants make during their evaluation as personality predictors. In this work, a multiple linear regression model was developed to assess the examinee's personality based on their movements. Movements were captured with the low-cost Microsoft Kinect camera, which facilitates its acceptance and implementation. To evaluate the performance of the proposed system, a pilot study was conducted aimed at assessing the personality traits defined by the Big-Five Personality Model. It was observed that the traits that best fit the model are Extroversion and Conscientiousness. In addition, several patterns that characterize the five personality traits were identified. These results show that it is feasible to assess an individual's personality through his or her movements and open up pathways for several research.Entities:
Keywords: Big-Five model; Kinect; movement; personality assessment
Mesh:
Year: 2022 PMID: 35632357 PMCID: PMC9147512 DOI: 10.3390/s22103949
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1This figure shows the 25 positions captured by the Kinect.
Figure 2Head and left knee displacement graphs during the first 30 s. (A,B) Head displacement of the least extroverted and the most extroverted participant, respectively. (C) Cumulative head displacement for high and low Extroversion. (D,E) Left knee displacement of the least and the most conscientious participant, respectively. (F) Cumulative left knee displacement for high and low Conscientiousness.
Coefficients (and p-values of the coefficients) obtained using stepwise linear regression for each of the five personality traits. For each trait, the R2/Adjusted R2 and p-value of the chi-square normality test for residuals are shown.
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| R2: 7.32% |
| chi-square Goodness of fit test for the normality of residuals: 0.04 |
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| Adjusted R2: 39.36% |
| chi-square Goodness of fit test for the normality of residuals: 0.73 |
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| Adjusted R2: 12.96% |
| chi-square Goodness of fit test for the normality of residuals: 0.10 |
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| R2: 18.93% |
| chi-square Goodness of fit test for the normality of residuals: 0.89 |
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| Adjusted R2: 27.88% |
| chi-square Goodness of fit test for the normality of residuals: 0.34 |