基于支持向量机和朴素贝叶斯技术的情感倾向比较分析

S. Rana, Archana Singh
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引用次数: 76

摘要

最近几年,人们致力于从在线网络消息、新闻和商业产品评论中的自然语言中自动挖掘观点和情感。在本文中,我们利用电影用户评论来探讨考虑正面和负面情绪的情感取向。我们应用了朴素贝叶斯的分类器技术。我们使用朴素贝叶斯、线性支持向量机和合成词等算法对评论进行了情感分析。实验结果表明,线性支持向量机的准确率最高,其次是合成词方法。结果还表明,准确率最高的是戏剧。
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Comparative analysis of sentiment orientation using SVM and Naive Bayes techniques
In the recent few years several efforts were dedicated for mining opinions and sentiment automatically from natural language in online networking messages, news and business product reviews. In this paper, we have explored sentiment orientation considering the positive and negative sentiments using film user reviews. We applied the technique Naive Bayes' classifier.). We have performed the sentiment analysis on the reviews using the algorithms like Naive Bayes, Linear SVM and Synthetic words. Our experimental results indicate that the Linear SVM has provided the best accuracy which is followed by the Synthetic words approach. The result also evaluate that the highest accuracy rate is of drama.
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