Political psycholinguistics: A comprehensive analysis of the language habits of liberal and conservative social media users.

心理信息 心理学 意识形态 心理语言学 社会心理学 抗性(生态学) 政治 愤怒 确定性 法学 认识论 政治学 生态学 哲学 认知 梅德林 神经科学 生物
作者
Joanna Sterling,John T. Jost,Richard Bonneau
出处
期刊:Journal of Personality and Social Psychology [American Psychological Association]
卷期号:118 (4): 805-834 被引量:95
标识
DOI:10.1037/pspp0000275
摘要

For nearly a century social scientists have sought to understand left-right ideological differences in values, motives, and thinking styles. Much progress has been made, but-as in other areas of research-this work has been criticized for relying on small and statistically unrepresentative samples and the use of reactive, self-report measures that lack ecological validity. In an effort to overcome these limitations, we employed automated text analytic methods to investigate the spontaneous, naturally occurring use of language in nearly 25,000 Twitter users. We derived 27 hypotheses from the literature on political psychology and tested them using 32 individual dictionaries. In 23 cases, we observed significant differences in the linguistic styles of liberals and conservatives. For instance, liberals used more language that conveyed benevolence, whereas conservatives used more language pertaining to threat, power, tradition, resistance to change, certainty, security, anger, anxiety, and negative emotion in general. In 17 cases, there were also significant effects of ideological extremity. For instance, moderates used more benevolent language, whereas extremists used more language pertaining to inhibition, tentativeness, affiliation, resistance to change, certainty, security, anger, anxiety, negative affect, swear words, and death-related language. These research methods, which are easily adaptable, open up new and unprecedented opportunities for conducting unobtrusive research in psycholinguistics and political psychology with large and diverse samples. (PsycINFO Database Record (c) 2020 APA, all rights reserved).
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