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社交媒体表达如何揭示个性。

How social media expression can reveal personality.

作者信息

Han Nuo, Li Sijia, Huang Feng, Wen Yeye, Su Yue, Li Linyan, Liu Xiaoqian, Zhu Tingshao

机构信息

Chinese Academy Sciences Key Laboratory of Behavioral Science, Institute of Psychology, Chinese Academy of Sciences, Beijing, China.

Department of Psychology, University of Chinese Academy of Sciences, Beijing, China.

出版信息

Front Psychiatry. 2023 Mar 2;14:1052844. doi: 10.3389/fpsyt.2023.1052844. eCollection 2023.

Abstract

BACKGROUND

Personality psychology studies personality and its variation among individuals and is an essential branch of psychology. In recent years, machine learning research related to personality assessment has started to focus on the online environment and showed outstanding performance in personality assessment. However, the aspects of the personality of these prediction models measure remain unclear because few studies focus on the interpretability of personality prediction models. The objective of this study is to develop and validate a machine learning model with domain knowledge introduced to enhance accuracy and improve interpretability.

METHODS

Study participants were recruited an online experiment platform. After excluding unqualified participants and downloading the Weibo posts of eligible participants, we used six psycholinguistic and mental health-related lexicons to extract textual features. Then the predictive personality model was developed using the multi-objective extra trees method based on 3,411 pairs of social media expression and personality trait scores. Subsequently, the prediction model's validity and reliability were evaluated, and each lexicon's feature importance was calculated. Finally, the interpretability of the machine learning model was discussed.

RESULTS

The features from Culture Value Dictionary were found to be the most important predictors. The fivefold cross-validation results regarding the prediction model for personality traits ranged between 0.44 and 0.48 ( < 0.001). The correlation coefficients of five personality traits between the two "split-half" datasets data ranged from 0.84 to 0.88 ( < 0.001). Moreover, the model performed well in terms of contractual validity.

CONCLUSION

By introducing domain knowledge to the development of a machine learning model, this study not only ensures the reliability and validity of the prediction model but also improves the interpretability of the machine learning method. The study helps explain aspects of personality measured by such prediction models and finds a link between personality and mental health. Our research also has positive implications regarding the combination of machine learning approaches and domain knowledge in the field of psychiatry and its applications to mental health.

摘要

背景

人格心理学研究人格及其个体差异,是心理学的一个重要分支。近年来,与人格评估相关的机器学习研究开始聚焦于在线环境,并在人格评估中表现出卓越性能。然而,这些预测模型所测量的人格方面仍不明确,因为很少有研究关注人格预测模型的可解释性。本研究的目的是开发并验证一个引入领域知识的机器学习模型,以提高准确性并增强可解释性。

方法

通过一个在线实验平台招募研究参与者。在排除不合格参与者并下载合格参与者的微博帖子后,我们使用六个与心理语言学和心理健康相关的词汇表来提取文本特征。然后基于3411对社交媒体表达和人格特质分数,使用多目标极端随机树方法开发预测人格模型。随后,评估预测模型的有效性和可靠性,并计算每个词汇表的特征重要性。最后,讨论机器学习模型的可解释性。

结果

发现来自文化价值词典的特征是最重要的预测因素。人格特质预测模型的五折交叉验证结果在0.44至0.48之间(<0.001)。两个“分半”数据集之间的五个人格特质的相关系数在0.84至0.88之间(<0.001)。此外,该模型在效标效度方面表现良好。

结论

通过将领域知识引入机器学习模型的开发,本研究不仅确保了预测模型的可靠性和有效性,还提高了机器学习方法的可解释性。该研究有助于解释此类预测模型所测量的人格方面,并找到人格与心理健康之间的联系。我们的研究对于机器学习方法与精神病学领域的领域知识相结合及其在心理健康中的应用也具有积极意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/08f5/10017531/5fecc314f559/fpsyt-14-1052844-g001.jpg

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