基于支持向量机和集成学习的电影评论数据集情感分析

A. Sulthana, K. JaithunbiA., Haritha Harikrishnan, Varadarajan Vijayakumar
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引用次数: 1

摘要

互联网使人们更容易相互联系,并已成为与世界表达思想和分享信息的平台。互联网的发展间接带动了社交网站的发展。人们在这些网站上发布的评论暗示了他们的观点,需要对评论进行分析才能理解他们的意图。本文采用自然语言处理技术和机器学习算法对文本数据进行分类。该方法的贡献有三个方面:1)使用卡方选择器选择k个最佳特征,2)执行支持向量机对评论进行分类(使用GridSearch方法调整SVM分类器的超参数),以及3)将bagging算法与基础分类器应用于新建的SVM分类器上。套袋算法的基分类器数量也相应变化。将所提出的方法的结果与类似的现有工作进行了比较,因此,与现有系统相比,发现它取得了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis on Movie Reviews Dataset Using Support Vector Machines and Ensemble Learning
The internet makes it easier for people to connect to each other and has become a platform to express ideas and share information with the world. The growth of the internet has indirectly led to the development of social networking sites. The reviews posted by people on these sites implies their opinion, and analysis over reviews is required to understand their intent. In this paper, natural language processing technique and machine learning algorithms are applied to classify the text data. The contributions of the proposed approach are three-fold: 1) chi square selector is applied to select the k-best features, 2) support vector machines is executed to classify the reviews (hyperparameters of the SVM classifier are tuned using GridSearch approach), and 3) bagging algorithm is applied with the base classifier over the newly built SVM classifier. The number of base classifiers of the bagging algorithm is varied accordingly. The results of the proposed approach are compared to the similar existing work, and hence, it is found to achieve better results as compared to the existing systems.
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