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A sentiment analysis method of objects by integrating sentiments from tweets

机译:通过将情绪与推文集成了物体的情绪分析方法

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摘要

Sentiment analysis has been gaining importance in many applications such as recommendation systems, the decision making support and prediction models. Sentiment analysis helps to understand and evaluate public opinion regarding social events, product services, and political trends, especially the feelings expressed through comments by users in social networks such as Twitter, Facebook, and Instagram. There have been a lot of research attempts to address the tweets sentiment analysis problem with high accuracy, particularly in case of tweets that express a single sentiment towards a single object. However, the results of the classification are not highly accurate in cases such as the following: a user expresses multiple sentiments towards a single object in a tweet; a user presents multiple sentiments towards multiple objects; and a user indicates a single sentiment towards multiple objects. Furthermore, the previous studies only analyze the sentiment of each tweet without considering the objects and the sentiment towards each object from an entire set of tweets. This study attempts to deal with the limitations of the previous methods; an approach is proposed herein, based on integrating the sentiment towards a particular object from all tweets related to that object. The proposed method focuses on determining the objects and indicating the sentiment towards the specific objects by combining the sentiments related to each object from the entire set of tweets. On experimental evaluation, the proposed method is observed to have achieved a fairly good result in terms of the error ratio and achieved information.
机译:情绪分析在推荐系统等许多应用中一直存在重要性,决策支持和预测模型。情感分析有助于了解和评估关于社交活动,产品服务和政治趋势的公众舆论,特别是通过用户在社交网络中的评论,如Twitter,Facebook和Instagram表示的感受。有很多研究尝试以高精度解决推文的情绪分析问题,特别是在发布朝向单个物体的鸣叫的情况下。然而,在诸如以下情况的情况下,分类的结果在诸如以下情况下不是高度准确的:用户在推文中向单个对象表达多种情绪;用户对多个物体提出多种情绪;用户指示对多个对象的单个情绪。此外,之前的研究仅在不考虑对象和来自整个推文的每个对象的对象和情绪的情况下分析每个推文的情绪。这项研究试图处理以前方法的局限性;本文基于将情绪与与该对象相关的所有推文集成到特定对象的情绪的基础上提出了一种方法。所提出的方法侧重于确定对象并通过将与来自整个推文的各个对象相关的情绪组合来指示对特定对象的情绪。在实验评估上,观察到所提出的方法在误差比和达到的信息方面取得了相当良好的结果。

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