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Identifying Political Sentiment between Nation States with Social Media

机译:通过社交媒体识别民族国家之间的政治情感

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This paper describes an approach to large-scale modeling of sentiment analysis for the social sciences. The goal is to model relations between nation states through social media. Many cross-disciplinary applications of NLP involve making predictions (such as predicting political elections), but this paper instead focuses on a model that is applicable to broader analysis. Do citizens express opinions in line with their home country's formal relations? When opinions diverge over time, what is the cause and can social media serve to detect these changes? We describe several learning algorithms to study how the populace of a country discusses foreign nations on Twitter, ranging from state-of-the-art contextual sentiment analysis to some required practical learners that filter irrelevant tweets. We evaluate on standard sentiment evaluations, but we also show strong correlations with two public opinion polls and current international alliance relationships. We conclude with some political science use cases.
机译:本文介绍了一种用于社会科学的情感分析的大规模建模方法。目的是通过社交媒体为民族国家之间的关系建模。 NLP的许多跨学科应用都涉及到预测(例如预测政治选举),但本文重点关注适用于更广泛分析的模型。公民是否根据本国的正式关系表达意见?当意见随时间变化时,是什么原因,社交媒体可以用来发现这些变化吗?我们描述了几种学习算法,以研究一个国家的民众如何在Twitter上讨论外国,从最先进的上下文情感分析到过滤不相关推文的一些必需的实际学习者,不一而足。我们根据标准的情感评估进行评估,但同时也显示与两项民意测验和当前的国际联盟关系密切相关。我们以一些政治学用例作为结束。

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