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Sentiment Analysis: Comparative Study between GSVM and KNN

机译:情感分析:GSVM与KNN的比较研究

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Sentiment classification aims detecting general opinion of users in social media towards business products or daily life events. The classification tells whether sentiment is positive or negative. Techniques of sentiment classification are categorized into lexical analysis and machine learning techniques. In this paper, we propose a comparative study between SVM applied genetics (GSVM) against KNN algorithm in terms of speed and accuracy. We present also an experimental study of sentiment classification on different domains movie reviews, financial and amazon toys products. The experimental results shows that GSVM achieves a classification accuracy of 92% and KNN achieves 87% on movie reviews dataset. For classification speed, KNN shows a remarkable improvement (above 10% improvement) in comparison with GSVM.
机译:情感分类旨在检测社交媒体中用户对商业产品或日常生活事件的总体看法。分类表明情绪是正面还是负面。情感分类技术分为词法分析和机器学习技术。在本文中,我们提出了在速度和准确性方面与SVM应用遗传学(GSVM)与KNN算法之间的比较研究。我们还提供了在不同领域的电影评论,金融和亚马逊玩具产品上的情感分类的实验研究。实验结果表明,在电影评论数据集上,GSVM的分类精度为92%,KNN的分类精度为87%。对于分类速度,与GSVM相比,KNN显示出显着的改进(提高了10%以上)。

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