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A hybrid approach to sentiment analysis of news comments

机译:一种杂交方法对新闻评论的情感分析

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摘要

Today, the web hosts quite a voluminous amount of information. Among such information is user generated content which plays an important role in analyzing different business aspects. Sentiment analysis therefore becomes an effective way of understanding public opinions. Businesses, particularly in ecommerce, stock market, social networks and also political entities can use sentiment analysis for decision making. Traditional methods of opinion gathering involved the use of questioners and interviews which solely depend on the good will of the people to be interviewed. Most research on sentiment analysis focused on social networks, product reviews and also on the stock market. Less research has been covered on analysis of news comments. This research embarks on a hybrid approach to sentiment analysis of news comments which involves using sentiment lexicon for polarity detection (polarity will be classified as positive, negative and neutral). The results from the lexicon based method are then used to train machine learning algorithms. Two algorithms employed in this research are the Support Vector Machine (SVM) and K-Nearest Neighbour (kNN). Experimental results show that SVM performs better than kNN on news comments.
机译:今天,网络寄出了相当大量的信息。在此类信息中,用户生成的内容在分析不同的业务方面扮演重要作用。因此,情感分析成为了解公众意见的有效方式。企业,特别是在电子商务,股票市场,社交网络以及政治实体中,可以使用情绪分析来决策。传统的意见方法集合涉及使用质疑和访谈,这完全取决于人们的良好意愿。大多数关于情感分析的研究专注于社交网络,产品评论和股票市场。对新闻评论的分析涵盖了较少的研究。本研究开始对涉及使用情绪词典进行极性检测的杂种方法来涉及新闻评论的感应分析(极性将被归类为正,阴性和中性)。然后,基于词汇的方法的结果用于培训机器学习算法。本研究中使用的两种算法是支持向量机(SVM)和K最近邻(KNN)。实验结果表明,SVM在新闻评论中表现优于KNN。

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