Institute of Management Studies, Goldsmiths, University of London, New Cross, London SE14 6NW, UK; Holistic AI, London, UK.
Holistic AI, London, UK; Department of Computer Science, University College London, Gower St, London WC1E 6EA, UK.
Acta Psychol (Amst). 2022 Aug;228:103659. doi: 10.1016/j.actpsy.2022.103659. Epub 2022 Jun 30.
Recent years have seen rapid advancements in the way that personality is measured, resulting in a number of innovative predictive measures being proposed, including using features extracted from videos and social media profiles. In the context of selection, game- and image-based assessments of personality are emerging, which can overcome issues like social desirability bias, lack of engagement and low response rates that are associated with traditional self-report measures. Forced-choice formats, where respondents are asked to rank responses, can also mitigate issues such as acquiescence and social desirability bias. Previously, we reported on the development of a gamified forced-choice image-based assessment of the Big Five personality traits created for use in selection, using Lasso regression for the scoring algorithms. In this study, we compare the machine-learning-based Lasso approach to ordinary least squares regression, as well as the summative approach that is typical of forced-choice formats. We find that the Lasso approach performs best in terms of generalisability and convergent validity, although the other methods have greater discriminate validity. We recommend the use of predictive Lasso regression models for scoring forced-choice image-based measures of personality over the other approaches. Potential further studies are suggested.
近年来,人格测量的方式取得了快速的进展,提出了许多创新的预测方法,包括使用从视频和社交媒体资料中提取的特征。在选拔方面,基于游戏和图像的人格评估正在出现,这些评估可以克服传统的自陈式评估方法所存在的问题,例如社会期望偏差、参与度低和回复率低。在强制选择格式中,要求受访者对回复进行排名,也可以减轻附和和社会期望偏差等问题。此前,我们曾报道过一种用于选拔的基于游戏的强制选择图像的五大人格特质评估方法的开发,该方法使用套索回归算法进行评分。在本研究中,我们将基于机器学习的套索方法与普通最小二乘回归以及强制选择格式中典型的综合方法进行了比较。我们发现,套索方法在可推广性和收敛有效性方面表现最佳,尽管其他方法具有更高的辨别有效性。我们建议在对人格的强制选择图像进行评分时,使用预测性套索回归模型,而不是其他方法。还提出了进一步研究的建议。