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福岛核电厂事故引发的福岛相关情绪变化-谣言如何左右人们的态度:社交媒体情绪分析。

Changing Emotions About Fukushima Related to the Fukushima Nuclear Power Station Accident-How Rumors Determined People's Attitudes: Social Media Sentiment Analysis.

机构信息

Graduate School of Health Sciences, Hokkaido University, Sapporo, Japan.

Quantum Medical Science Directorate, National Institutes for Quantum and Radiological Science and Technology, Chiba, Japan.

出版信息

J Med Internet Res. 2020 Sep 2;22(9):e18662. doi: 10.2196/18662.

Abstract

BACKGROUND

Public interest in radiation rose after the Tokyo Electric Power Company (TEPCO) Fukushima Daiichi Nuclear Power Station accident was caused by an earthquake off the Pacific coast of Tohoku on March 11, 2011. Various reports on the accident and radiation were spread by the mass media, and people displayed their emotional reactions, which were thought to be related to information about the Fukushima accident, on Twitter, Facebook, and other social networking sites. Fears about radiation were spread as well, leading to harmful rumors about Fukushima and the refusal to test children for radiation. It is believed that identifying the process by which people emotionally responded to this information, and hence became gripped by an increased aversion to Fukushima, might be useful in risk communication when similar disasters and accidents occur in the future. There are few studies surveying how people feel about radiation in Fukushima and other regions in an unbiased form.

OBJECTIVE

The purpose of this study is to identify how the feelings of local residents toward radiation changed according to Twitter.

METHODS

We used approximately 19 million tweets in Japanese containing the words "radiation" (), "radioactivity" (), and "radioactive substances" () that were posted to Twitter over a 1-year period following the Fukushima nuclear accident. We used regional identifiers contained in tweets (ie, nouns, proper nouns, place names, postal codes, and telephone numbers) to categorize them according to their prefecture, and then analyzed the feelings toward those prefectures from the semantic orientation of the words contained in individual tweets (ie, positive impressions or negative impressions).

RESULTS

Tweets about radiation increased soon after the earthquake and then decreased, and feelings about radiation trended positively. We determined that, on average, tweets associating Fukushima Prefecture with radiation show more positive feelings than those about other prefectures, but have trended negatively over time. We also found that as other tweets have trended positively, only bots and retweets about Fukushima Prefecture have trended negatively.

CONCLUSIONS

The number of tweets about radiation has decreased overall, and feelings about radiation have trended positively. However, the fact that tweets about Fukushima Prefecture trended negatively, despite decreasing in percentage, suggests that negative feelings toward Fukushima Prefecture have become more extreme. We found that while the bots and retweets that were not about Fukushima Prefecture gradually trended toward positive feelings, the bots and retweets about Fukushima Prefecture trended toward negative feelings.

摘要

背景

2011 年 3 月 11 日,日本东北太平洋地区发生地震,导致东京电力公司福岛第一核电站发生事故,公众对辐射的兴趣有所增加。大众媒体广泛报道了事故和辐射情况,人们在 Twitter、Facebook 等社交网站上表达了对福岛事故的情绪反应,这些反应被认为与福岛事故的信息有关。此外,还传播了对辐射的恐惧,导致了对福岛的有害谣言和拒绝对儿童进行辐射检测。因此,识别人们对这些信息的情绪反应过程,从而了解他们对福岛的厌恶情绪增加的原因,可能有助于在未来发生类似灾害和事故时进行风险沟通。目前,很少有研究以无偏倚的方式调查福岛和其他地区的人们对辐射的感受。

目的

本研究旨在通过 Twitter 识别当地居民对辐射的感受变化。

方法

我们使用了大约 1900 万条含有“辐射”()、“放射性”()和“放射性物质”()的日语推文,这些推文是在福岛核事故发生后 1 年内发布在 Twitter 上的。我们使用推文中包含的地区标识符(即名词、专有名词、地名、邮政编码和电话号码),根据它们的县进行分类,然后从单个推文中包含的词语的语义方向分析对这些县的感受(即积极印象或消极印象)。

结果

地震后不久,关于辐射的推文数量增加,然后减少,对辐射的看法呈积极趋势。我们确定,平均而言,与福岛县相关的推文显示出更多的积极感受,而不是其他县,但随着时间的推移,趋势呈负向。我们还发现,随着其他推文呈积极趋势,只有关于福岛县的推文和转发呈负向趋势。

结论

关于辐射的推文数量总体上有所减少,对辐射的看法呈积极趋势。然而,尽管福岛县的推文百分比呈下降趋势,但呈负向趋势的事实表明,对福岛县的负面情绪变得更加极端。我们发现,虽然与福岛县无关的推文和转发逐渐呈积极趋势,但关于福岛县的推文和转发呈消极趋势。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2477/7495261/1ec3ef2465f3/jmir_v22i9e18662_fig1.jpg

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