Garcia Danilo, Rosenberg Patricia, Nima Ali Al, Granjard Alexandre, Cloninger Kevin M, Sikström Sverker
Blekinge Center of Competence, Karlskrona, Sweden.
Department of Psychology, University of Gothenburg, Gothenburg, Sweden.
Front Psychol. 2020 Feb 19;11:16. doi: 10.3389/fpsyg.2020.00016. eCollection 2020.
If individual differences are relevant and prominent features of personality, then they are expected to be encoded in natural language, thus manifesting themselves in single words. Recently, the quantification of text data using advanced natural language processing techniques offers innovative opportunities to map people's own words and narratives to their responses to self-reports. Here, we demonstrate the usefulness of self-descriptions in natural language and what we tentatively call Quantitative Semantic Test Theory (QuSTT) to validate two short inventories that measure character traits.
In Study 1, participants ( = 997) responded to the Short Character Inventory, which measures self-directedness, cooperativeness, and self-transcendence. In Study 2, participants ( = 2373) responded to Short Dark Triad, which measures Machiavellianism, narcissism, and psychopathy. In both studies, respondents were asked to generate 10 self-descriptive words. We used the Latent Semantic Algorithm to quantify the meaning of each trait using the participants' self-descriptive words. We then used these semantic representations to predict the self-reported scores. In a second set of analyses, we used word-frequency analyses to map the self-descriptive words to each of the participants' trait scores (i.e., one-dimensional analysis) and character profiles (i.e., three-dimensional analysis).
The semantic representation of each character trait was related to each corresponding self-reported score. However, participants' self-transcendence and Machiavellianism scores demonstrated similar relationships to all three semantic representations of the character traits in their respective personality model. The one-dimensional analyses showed that, for example, "loving" was indicative of both high cooperativeness and self-transcendence, while "compassionate," "kind," and "caring" was unique for individuals high in cooperativeness. The words "kind" and "caring" indicated low levels of Machiavellianism and psychopathy, whereas "shy" or "introvert" indicated low narcissism. We also found specific keywords that unify or that make the individuals in some profiles unique.
Despite being short, both inventories capture individuals' identity as expected. Nevertheless, our method also points out some shortcomings and overlaps between traits measured with these inventories. We suggest that self-descriptive words can be quantified to validate measures of psychological constructs (e.g., prevalence in self-descriptions or QuSTT) and that this method may complement traditional methods for testing the validity of psychological measures.
如果个体差异是人格的相关且突出特征,那么它们有望被编码在自然语言中,从而在单个词汇中体现出来。最近,使用先进自然语言处理技术对文本数据进行量化,为将人们自己的话语和叙述映射到他们对自我报告的回答提供了创新机会。在此,我们展示了自然语言中自我描述的有用性以及我们暂定称为定量语义测试理论(QuSTT)的方法,以验证两个测量性格特质的简短量表。
在研究1中,参与者(n = 997)对测量自我导向、合作性和自我超越性的简短性格量表做出回应。在研究2中,参与者(n = 2373)对测量马基雅维利主义、自恋和精神病态的简短黑暗三元量表做出回应。在两项研究中,要求受访者生成10个自我描述性词汇。我们使用潜在语义算法,利用参与者的自我描述性词汇来量化每个特质的含义。然后我们使用这些语义表征来预测自我报告的分数。在第二组分析中,我们使用词频分析将自我描述性词汇映射到每个参与者的特质分数(即一维分析)和性格概况(即三维分析)。
每个性格特质的语义表征与相应的自我报告分数相关。然而,参与者的自我超越性和马基雅维利主义分数在各自的人格模型中,与性格特质的所有三种语义表征都呈现出相似的关系。一维分析表明,例如,“有爱心的”表明合作性和自我超越性都很高,而“富有同情心的”“善良的”和“体贴的”对于合作性高的个体是独特的。“善良的”和“体贴的”这两个词表明马基雅维利主义和精神病态水平较低,而“害羞的”或“内向的”表明自恋水平较低。我们还发现了一些统一或使某些概况中的个体独特的特定关键词。
尽管这两个量表都很短,但都如预期那样捕捉到了个体的特征。然而,我们的方法也指出了这些量表所测量特质之间的一些缺点和重叠之处。我们建议,可以对自我描述性词汇进行量化,以验证心理构念的测量(例如,自我描述中的普遍性或QuSTT),并且这种方法可能补充传统的心理测量效度测试方法。