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在在线社交网络上计算情绪词汇是否能提供一个洞察人们情绪主观体验的窗口?以 Facebook 为例的案例研究。

Does counting emotion words on online social networks provide a window into people's subjective experience of emotion? A case study on Facebook.

机构信息

Department of Psychology, University of Michigan.

Faculty of Psychology and Educational Sciences, KU Leuven.

出版信息

Emotion. 2019 Feb;19(1):97-107. doi: 10.1037/emo0000416. Epub 2018 Apr 5.

DOI:10.1037/emo0000416
PMID:29620384
Abstract

Psychologists have long debated whether it is possible to assess how people subjectively feel without asking them. The recent proliferation of online social networks has recently added a fresh chapter to this discussion, with research now suggesting that it is possible to index people's subjective experience of emotion by simply counting the number of emotion words contained in their online social network posts. Whether the conclusions that emerge from this work are valid, however, rests on a critical assumption: that people's usage of emotion words in their posts accurately reflects how they feel. Although this assumption is widespread in psychological research, here we suggest that there are reasons to challenge it. We corroborate these assertions in 2 ways. First, using data from 4 experience-sampling studies of emotion in young adults, we show that people's reports of how they feel throughout the day neither predict, nor are predicted by, their use of emotion words on Facebook. Second, using simulations we show that although significant relationships emerge between the use of emotion words on Facebook and self-reported affect with increasingly large numbers of observations, the relationship between these variables was in the opposite of the theoretically expected direction 50% of the time (i.e., 3 of 6 models that we performed simulations on). In contrast to counting emotion words, we show that judges' ratings of the emotionality of participants' Facebook posts consistently predicts how people feel across all analyses. These findings shed light on how to draw inferences about emotion using online social network data. (PsycINFO Database Record (c) 2019 APA, all rights reserved).

摘要

心理学家长期以来一直在争论,是否可以在不询问人们的情况下评估他们的主观感受。最近,在线社交网络的大量出现为这一讨论增添了新的篇章,研究表明,通过简单地计算他们在在线社交网络帖子中包含的情感词汇数量,就可以索引人们对情感的主观体验。然而,这项工作得出的结论是否有效,取决于一个关键的假设:即人们在帖子中使用情感词汇准确反映了他们的感受。尽管这一假设在心理学研究中很普遍,但我们认为有理由对此提出质疑。我们通过两种方式证实了这些断言。首先,我们使用来自 4 项关于年轻人情绪的经验抽样研究的数据,表明人们全天对自己感觉的报告既不能预测,也不能被他们在 Facebook 上使用情感词汇所预测。其次,我们通过模拟表明,尽管随着观察次数的增加,Facebook 上使用情感词汇与自我报告的影响之间会出现显著的关系,但这两个变量之间的关系在 50%的时间里与理论预期的方向相反(即,我们进行模拟的 6 个模型中有 3 个)。与计算情感词汇不同,我们表明,评判者对参与者 Facebook 帖子情感性的评价始终可以预测人们在所有分析中的感受。这些发现揭示了如何使用在线社交网络数据推断情绪。(PsycINFO 数据库记录(c)2019 APA,保留所有权利)。

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