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首页> 外文期刊>Frontiers in Psychology >Validation of Two Short Personality Inventories Using Self-Descriptions in Natural Language and Quantitative Semantics Test Theory
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Validation of Two Short Personality Inventories Using Self-Descriptions in Natural Language and Quantitative Semantics Test Theory

机译:使用自然语言中的自我描述验证两种短的人格清单和定量语义测试理论

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Background 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. Method In Study 1, participants (N1 = 997) responded to the Short Character Inventory, which measures self-directedness, cooperativeness, and self-transcendence. In Study 2, participants (N2 = 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 an 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-dimension analysis) and character profiles (i.e., three-dimensions analysis). Results 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-dimension 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 make individuals in some profiles unique. Conclusions Despite being short, both inventories captured individuals’ identity as expected. Nevertheless, we 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.
机译:背景技术如果个性差异是相关的和个性的突出特征,那么它们预计将以自然语言编码,因此,以单词为单词表现出来。最近,使用先进的自然语言处理技术的文本数据的量化提供了创新的机会,可以将人们自己的话语和叙述映射到自我报告的回应。在这里,我们展示了自然语言中自我描述的有用性以及我们暂时呼唤定量语义测试理论(QUSTT)以验证两个测量字符特征的短存款。研究中的方法1,参与者(N1 = 997)响应了短字符库存,这些库存措施衡量自我导向,合作和自我超越。在研究2中,参与者(N2 = 2373)回应了短暂的黑暗三合会,衡量了机械,自恋和精神病。在这两项研究中,被要求产生10个自我描述性词语。我们使用潜在语义算法使用参与者的自我描述性词来量化每个特征的含义。然后我们使用这些语义表示来预测自我报告的分数。在第二组分析中,我们使用了字频分析来将自描述词映射到每个参与者的特征分数(即一维分析)和字符轮廓(即,三维分析)。结果每个角色特征的语义表示与每个相应的自我报告的分数有关。然而,参与者的自我超越和机械义派主义分数表现出与各自个性模型中字符特征的所有三个语义表示类似的关系。一维分析表明,例如,“爱”表示高合作能力和自我超越,而“富有同情心”,“善良”和“关怀”对于合作的个人具有独特的人。 “善良”和“关怀”表示低水平的机械脑和精神病,而“害羞”或“内向”表示低自恋。我们还发现了特定的关键字,使个人在某些配置文件中唯一。结论尽管短缺,但两家库存都捕获了个人的身份。尽管如此,我们还指出了一些与这些库存测量的特征之间的缺点和重叠。我们建议可以量化自我描述性词以验证心理构建的措施(例如,自我描述或QUSTT中的患病率),并且该方法可以补充传统方法来测试心理措施的有效性。

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