School of Psychology, Universidad Autónoma de Madrid, 28049 Madrid, Spain.
Instituto de Ingeniería del Conocimiento, 28049 Madrid, Spain.
Sensors (Basel). 2024 Nov 7;24(22):7151. doi: 10.3390/s24227151.
(1) Background: As far back as the 1930s, it was already thought that gestures, clothing, speech, posture, and gait could express an individual's personality. Different research programs, some focused on linguistic cues, were launched, though results were inconsistent. The development of new speech analysis technology and the generalization of big data analysis have created an opportunity to test the predictive power of voice features on personality dimensions. This study aims to explore the feasibility of an automatic personality assessment system in the context of personnel selection. (2) Methods: One hundred participants were recorded during an individual interview for voice analysis. They also completed the NEO-FFI and were required to ask and collect the assessment of their personality by a close significant other. Furthermore, an expert estimated participants' personality dimensions based on the viewing of the recorded interviews. (3) Results: Results showed there are specific voice features related to the externalization of individuals' personalities (predictions ranging from 0.3 to 0.4). Voice features also predicted significant others' estimations and expert ratings of the target individual's personality, though the features were not exactly the same. (4) Conclusions: It is noteworthy that predictions were made based on voice recordings obtained using ordinary devices in controlled but not restricted speech situations, which may make such an approach a promising tool for personality assessment in contexts such as personnel selection.
(1) 背景:早在 20 世纪 30 年代,人们就已经意识到手势、服装、言语、姿势和步态可以表达一个人的个性。尽管结果不一致,但还是启动了一些不同的研究计划,其中一些专注于语言线索。新的语音分析技术的发展和大数据分析的普及为测试语音特征对个性维度的预测能力创造了机会。本研究旨在探索在人员选拔背景下自动个性评估系统的可行性。(2) 方法:100 名参与者在个人面试期间进行了语音分析记录。他们还完成了 NEO-FFI,并被要求要求并收集亲密的重要他人对他们个性的评估。此外,专家根据录制的访谈评估参与者的个性维度。(3) 结果:结果表明,存在与个体人格外化相关的特定语音特征(预测范围从 0.3 到 0.4)。语音特征还预测了重要他人对目标个体个性的估计和专家评分,尽管特征不完全相同。(4) 结论:值得注意的是,这些预测是基于在控制但不限于言语情况下使用普通设备获得的语音录音做出的,这使得这种方法成为人员选拔等背景下个性评估的一种有前途的工具。