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识别在线社交媒体中集体情绪的长期周期和记忆。

Identifying long-term periodic cycles and memories of collective emotion in online social media.

机构信息

Department of Policy and Planning Sciences, University of Tsukuba, Ibaraki, Japan.

Sony Computer Science Laboratories, Inc., Tokyo, Japan.

出版信息

PLoS One. 2019 Mar 21;14(3):e0213843. doi: 10.1371/journal.pone.0213843. eCollection 2019.

Abstract

Collective emotion has been traditionally evaluated by questionnaire survey on a limited number of people. Recently, big data of written texts on the Internet has been available for analyzing collective emotion for very large scales. Although short-term reflection between collective emotion and real social phenomena has been widely studied, long-term dynamics of collective emotion has not been studied so far due to the lack of long persistent data sets. In this study, we extracted collective emotion over a 10-year period from 3.6 billion Japanese blog articles. Firstly, we find that collective emotion shows clear periodic cycles, i.e., weekly and seasonal behaviors, accompanied with pulses caused by natural disasters. For example, April is represented by high Tension, probably due to starting school in Japan. We also identified long-term memory in the collective emotion that is characterized by the power-law decay of the autocorrelation function over several months.

摘要

集体情绪传统上是通过对有限数量的人进行问卷调查来评估的。最近,互联网上的大量书面文本可用于分析非常大规模的集体情绪。尽管已经广泛研究了集体情绪与真实社会现象之间的短期反馈,但由于缺乏长期持久的数据集,到目前为止还没有研究集体情绪的长期动态。在这项研究中,我们从 36 亿条日本博客文章中提取了 10 年的集体情绪。首先,我们发现集体情绪表现出明显的周期性循环,即每周和季节性行为,并伴有自然灾害引起的脉冲。例如,四月的紧张程度较高,可能是因为日本开始上学。我们还在集体情绪中发现了长期记忆,其特征是自相关函数在几个月内呈幂律衰减。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8ac4/6428299/f07d36651bf6/pone.0213843.g001.jpg

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