Male, Female, and Nonbinary Differences in UK Twitter Self-descriptions: A Fine-grained Systematic Exploration

M. Thelwall, Saheeda Thelwall, Ruth Fairclough
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引用次数: 4

Abstract

Abstract Purpose Although gender identities influence how people present themselves on social media, previous studies have tested pre-specified dimensions of difference, potentially overlooking other differences and ignoring nonbinary users. Design/methodology/approach Word association thematic analysis was used to systematically check for fine-grained statistically significant gender differences in Twitter profile descriptions between 409,487 UK-based female, male, and nonbinary users in 2020. A series of statistical tests systematically identified 1,474 differences at the individual word level, and a follow up thematic analysis grouped these words into themes. Findings The results reflect offline variations in interests and in jobs. They also show differences in personal disclosures, as reflected by words, with females mentioning qualifications, relationships, pets, and illnesses much more, nonbinaries discussing sexuality more, and males declaring political and sports affiliations more. Other themes were internally imbalanced, including personal appearance (e.g. male: beardy; female: redhead), self-evaluations (e.g. male: legend; nonbinary: witch; female: feisty), and gender identity (e.g. male: dude; nonbinary: enby; female: queen). Research limitations The methods are affected by linguistic styles and probably under-report nonbinary differences. Practical implications The gender differences found may inform gender theory, and aid social web communicators and marketers. Originality/value The results show a much wider range of gender expression differences than previously acknowledged for any social media site.
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英国推特自我描述中的男性、女性和非二元差异:细粒度系统探索
虽然性别认同会影响人们在社交媒体上的自我表现,但之前的研究已经测试了预先指定的差异维度,可能忽略了其他差异,忽略了非二元用户。设计/方法/方法使用词关联主题分析系统地检查了2020年英国409,487名女性、男性和非二元用户在Twitter个人资料描述中的细粒度统计显著性别差异。一系列的统计测试系统地确定了1474个单个单词水平上的差异,并进行了后续的主题分析,将这些单词分组为主题。研究结果反映了兴趣和工作的线下差异。他们在个人信息披露方面也表现出差异,这反映在语言上,女性更多地提到资格、关系、宠物和疾病,非二元性别的人更多地谈论性,而男性更多地宣布政治和体育关系。其他主题内部不平衡,包括个人外观(例如男性:大胡子;女性:红发),自我评价(例如男性:传奇;非:女巫;女性:feisty)和性别认同(例如男性:dude;非:enby;女:女王)。研究局限:研究方法受语言风格的影响,可能会低估非二元差异。所发现的性别差异可以为性别理论提供信息,并为社交网络传播者和营销人员提供帮助。研究结果显示,性别表达差异的范围比之前任何社交媒体网站都要大得多。
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