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Twitter sentiment analysis using fuzzy integral classifier fusion

机译:使用模糊积分分类器融合的Twitter情感分析

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摘要

A thorough analysis of people's sentiment about a business, an event or an individual is necessary for business development, event analysis and popularity assessment. Social networks are rich sources of obtaining user opinions about people, events and products. Sentiment analysis conducted using multiple user comments and messages on microblogs is an interesting field of data mining and natural language processing (NLP). Different techniques and algorithms have recently been developed for conducting sentiment analysis on Twitter. Different proposed classification and pure NLP-based methods have different behaviours in predicting sentiment orientation. In this study, we combined the results of the classic classifiers and NLP-based methods to propose a new approach for Twitter sentiment analysis. The proposed method uses a fuzzy measure for determining the importance of each classifier to make the final decision. Fuzzy measures are used with the Choquet fuzzy integral for fusing the classifier outputs in order to generate the final label. Our experiments with different Twitter sentiment datasets show that fuzzy integral-based classifier fusion improves the average accuracy of sentiment classification.
机译:对于业务发展,事件分析和受欢迎程度评估,有必要对人们对企业,事件或个人的情绪进行全面分析。社交网络是获取有关人员,事件和产品的用户意见的丰富资源。使用微博上的多个用户评论和消息进行的情感分析是数据挖掘和自然语言处理(NLP)的一个有趣领域。最近开发了用于在Twitter上进行情感分析的不同技术和算法。不同的拟议分类和基于纯NLP的方法在预测情感倾向方面有不同的行为。在这项研究中,我们结合了经典分类器的结果和基于NLP的方法,为Twitter情绪分析提出了一种新方法。所提出的方法使用模糊度量来确定每个分类器的重要性,以做出最终决定。模糊度量与Choquet模糊积分一起用于融合分类器输出,以生成最终标签。我们对不同的Twitter情感数据集进行的实验表明,基于模糊积分的分类器融合提高了情感分类的平均准确性。

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