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Multilingual Sentiment Analysis on Social Media Disaster Data

机译:社交媒体灾难数据的多语言情感分析

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摘要

The use of social media in disaster situations is inevitable, but it is also the case that information presented through this medium can include both public opinion and general information. In a multicultural nation like Malaysia, people like to use codeswitch sentences, through which they mix several languages to express their opinions. Sentiment analysis can be used to classify the subjectivity of social media data, by considering the multilingual aspect of Malaysian users who may experience disaster. In this paper, the authors propose a multilingual sentiment classifier used to understand how Malaysians react during a disaster. The proposed model collects disaster data from social media, which is then classified through a deep learning algorithm, so as to analyze the sentiments of people affected by disasters. The experiment results show that a multilingual sentiment classifier can achieve 0.862 accuracy and 0.864 F1-score which is considered suitable for analyzing social media data. The classification result shows that most Malaysians use social media to disseminate information during disaster periods.
机译:在灾难情况下不可避免地要使用社交媒体,但是在这种情况下,通过这种媒体提供的信息既可以包括民意,也可以包括一般信息。在马来西亚这样的多元文化国家中,人们喜欢使用代码转换语句,通过这些语句,他们可以混合使用几种语言来表达自己的观点。通过考虑可能遭受灾难的马来西亚用户的多语言方面,可以使用情感分析来对社交媒体数据的主观性进行分类。在本文中,作者提出了一种多语言情感分类器,用于了解马来西亚人在灾难期间的反应。该模型从社交媒体收集灾难数据,然后通过深度学习算法对其进行分类,以分析受灾人员的情绪。实验结果表明,多语言情感分类器可以达到0.862的准确度和0.864的F1评分,被认为适合于分析社交媒体数据。分类结果显示,大多数马来西亚人在灾难期间使用社交媒体传播信息。

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