#脱欧Vs.停止脱欧:哪个更时髦?NLP分析

Marco A. Palomino, Adithya Murali
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引用次数: 1

摘要

网络趋势已经成为一种新的信息传播方式,正在重塑数字时代的新闻业。我们认为情感分析——对文本中表达的人类情感进行分类——可以增强现有的趋势发现算法。通过突出两极分化的话题,情绪分析可以洞察参与趋势的用户的影响力,以及其他用户如何接受这种趋势。作为案例研究,我们调查了一个非常热门的话题:英国脱欧,即英国退出欧盟。我们检索了一个关于英国脱欧的公开推文的实验语料库,并用它们来测试一种确定趋势的拟议算法。我们验证了算法的效率,并衡量了在捕获趋势上表达的情绪,以确认高度极化的数据确保了趋势的出现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
#Brexit Vs. #Stopbrexit: What is Trendier? An NLP Analysis
Online trends have established themselves as a new method of information propagation that is reshaping journalism in the digital age. We argue that sentiment analysis—the classification of human emotion expressed in text—can enhance existing algorithms for trend discovery. By highlighting topics that are polarised, sentiment analysis can offer insight into the influence of users who are involved in a trend, and how other users adopt such a trend. As a case study, we have investigated a highly topical subject: Brexit, the withdrawal of the United Kingdom from the European Union. We retrieved an experimental corpus of publicly available tweets referring to Brexit and used them to test a proposed algorithm to identify trends. We validate the efficiency of the algorithm and gauge the sentiment expressed on the captured trends to confirm that highly polarised data ensures the emergence of trends.
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