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首页> 外文期刊>International Journal of Social Network Mining >Spatial patterns of the French rail strikes from social networks using weighted k-nearest neighbour
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Spatial patterns of the French rail strikes from social networks using weighted k-nearest neighbour

机译:法国铁路的空间模式从使用加权k-collect邻居的社交网络罢工

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摘要

The information analysis provided by millions of social network users is one of the most important sources of information yielding interesting insights of spatial patterns about socio-political events. During the recent French National Railway strikes (from April to June, 2018), Twitter was used as platform where people expressed their opinions, with millions of French National Railway Company (SNCF) tweets posted over the strike period. In this paper, we have discussed a methodology which allows the utilisation and interpretation of Twitter data to determine spatial patterns over French territory. The identification of a geographic strike landscape is achieved through spatial interpolation using weighted k-nearest neighbour. This study shows the benefits of geo-statistical learning for extracting sentiment polarities of social events across France.
机译:由数百万社会网络用户提供的信息分析是最重要的信息来源之一,产生了对社会政治事件的空间模式的有趣见解。在最近的法国国家铁路罢工(2018年4月至6月),推特被用作人们表达意见的平台,数百万法国国家铁路公司(SNCF)推文发布在罢工期间。在本文中,我们已经讨论了一种方法论允许推特数据的利用和解释来确定法国领域的空间模式。通过使用加权k最近邻居的空间插值来实现地理撞击景观的识别。本研究表明了地理统计学习对法国社会活动的情感极化的好处。

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