Social media emotions annotation guide (SMEmo): Development and initial validity.

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Behavior Research Methods Pub Date : 2024-08-01 Epub Date: 2023-09-11 DOI:10.3758/s13428-023-02195-1
Susannah B F Paletz, Ewa M Golonka, Nick B Pandža, Grace Stanton, David Ryan, Nikki Adams, C Anton Rytting, Egle E Murauskaite, Cody Buntain, Michael A Johns, Petra Bradley
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Abstract

The proper measurement of emotion is vital to understanding the relationship between emotional expression in social media and other factors, such as online information sharing. This work develops a standardized annotation scheme for quantifying emotions in social media using recent emotion theory and research. Human annotators assessed both social media posts and their own reactions to the posts' content on scales of 0 to 100 for each of 20 (Study 1) and 23 (Study 2) emotions. For Study 1, we analyzed English-language posts from Twitter (N = 244) and YouTube (N = 50). Associations between emotion ratings and text-based measures (LIWC, VADER, EmoLex, NRC-EIL, Emotionality) demonstrated convergent and discriminant validity. In Study 2, we tested an expanded version of the scheme in-country, in-language, on Polish (N = 3648) and Lithuanian (N = 1934) multimedia Facebook posts. While the correlations were lower than with English, patterns of convergent and discriminant validity with EmoLex and NRC-EIL still held. Coder reliability was strong across samples, with intraclass correlations of .80 or higher for 10 different emotions in Study 1 and 16 different emotions in Study 2. This research improves the measurement of emotions in social media to include more dimensions, multimedia, and context compared to prior schemes.

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社交媒体情感注释指南(SMEmo):开发和初步有效性。
正确测量情感对于理解社交媒体中的情感表达与在线信息共享等其他因素之间的关系至关重要。这项研究利用最新的情感理论和研究成果,开发了一套标准化的注释方案,用于量化社交媒体中的情感。人类注释者对社交媒体帖子和他们自己对帖子内容的反应进行评估,对 20 种情绪(研究 1)和 23 种情绪(研究 2)分别采用 0 到 100 的评分标准。在研究 1 中,我们分析了来自 Twitter(总数 = 244)和 YouTube(总数 = 50)的英文帖子。情绪评分与基于文本的测量(LIWC、VADER、EmoLex、NRC-EIL、Emotionality)之间的关联证明了收敛性和辨别有效性。在研究 2 中,我们在波兰语(N = 3648)和立陶宛语(N = 1934)的 Facebook 多媒体帖子中测试了该方案的扩展版。虽然相关性低于英语,但 EmoLex 和 NRC-EIL 的收敛性和鉴别性模式仍然有效。不同样本间的编码器可靠性很高,研究 1 中 10 种不同情绪和研究 2 中 16 种不同情绪的类内相关系数均达到或超过 0.80。与之前的方案相比,这项研究改进了社交媒体中的情绪测量,纳入了更多的维度、多媒体和语境。
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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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