One Belt, One Road, One Sentiment? A Hybrid Approach to Gauging Public Opinions on the New Silk Road Initiative

Jonathan Kevin Chandra, E. Cambria
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引用次数: 8

Abstract

With the rapid adoption of the Internet, fast-moving social media platforms have been able to extract and encapsulate real-time public sentiments on different entities. Real-time sentiment analysis on current dynamic events such as elections, global affairs and sports are essential in the understanding the public's reaction to the states and trajectories of these events. In this paper, we aim to extract the sentiments of the Belt and Road Initiative from Twitter. Using aspect-based sentiment analysis, we were able to obtain the tweet's sentiment polarity on the related aspect category to better understand the topics that were discussed. We have developed an end-to-end sentiment analysis system that collects relevant data from Twitter, processes it and visualizes it on an intuitive display. We employed a hybrid approach of symbolic and sub-symbolic techniques using gated convolutional networks, aspect embeddings and the SenticNet framework to solve the subtasks of aspect category detection and aspect category polarity. A confidence score threshold was used to decide on the results provided by the models from the differing approaches.
一带一路,一种情怀?新丝绸之路倡议民意调查的混合方法
随着互联网的迅速普及,快速发展的社交媒体平台已经能够提取和封装不同实体的实时公众情绪。对选举、全球事务和体育等当前动态事件进行实时情绪分析,对于了解公众对这些事件的状态和轨迹的反应至关重要。在本文中,我们旨在从Twitter中提取“一带一路”倡议的情绪。使用基于方面的情感分析,我们能够在相关方面类别上获得tweet的情感极性,以更好地理解所讨论的主题。我们开发了一个端到端的情感分析系统,可以从Twitter上收集相关数据,对其进行处理,并在直观的显示上进行可视化。采用门控卷积网络、方面嵌入和SenticNet框架的符号和子符号混合方法来解决方面类别检测和方面类别极性的子任务。使用置信分数阈值来决定不同方法的模型所提供的结果。
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