电影评论情感分析分类算法的性能评价

Q3 Computer Science
Sutriawan Sutriawan, P. Andono, Muljono Muljono, R. A. Pramunendar
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引用次数: 2

摘要

目前大多数关于情感分析的研究都发展迅速,涵盖了政治评论、电影评论和产品评论等主题。情感分析研究的分类和聚类阶段涉及多个学科。其中包括文本分类比较研究和算法性能优化。情感分析研究中的一个复杂问题是处理非结构化或半结构化数据。非结构化数据阻碍了情感分析过程和分类器算法效率的提高。为了成功地管理非结构化数据并提供准确和相关的信息,需要独特的策略。本文详细介绍了基于支持向量机、朴素贝叶斯、k近邻和决策树的分类模型性能评价方法。根据研究结果,SVM的准确率为96%,朴素贝叶斯为86%。而决策树的增益精度为78%,kNN分类模型的增益精度为78%。测试结果表明,SVM在准确率性能上优于其他分类模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Evaluation of Classification Algorithm for Movie Review Sentiment Analysis
The majority of the current research on sentiment analysis, which covers topics like political reviews, movie reviews, and product reviews, has developed quickly. The classification and clustering stage of sentiment analysis research involves a number of subjects. Some of them cover text classification comparison research and algorithm performance optimization. An intricate issue in sentiment analysis research is dealing with unstructured or semi-structured data. The sentiment analysis procedure and improving the efficacy of the classifier’s algorithm are both hampered by unstructured data. In order to manage unstructured data successfully and provide accurate and relevant information, unique strategies are required. The proposed classification model performance evaluation using Support Vector Machine, Naive Bayes, K-Nearest Neighbor, and Decision Tree is specifically covered in this paper. According to the study’s findings, SVM has an accuracy rate of 96% and Naive Bayes is 86%. While the decision tree’s gain accuracy is 78 percent and the kNN classification model’s gain accuracy is 78 percent, respectively. The test results demonstrate that SVM is superior to other classification models in terms of accuracy performance.
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来源期刊
International Journal of Computing
International Journal of Computing Computer Science-Computer Science (miscellaneous)
CiteScore
2.20
自引率
0.00%
发文量
39
期刊介绍: The International Journal of Computing Journal was established in 2002 on the base of Branch Research Laboratory for Automated Systems and Networks, since 2005 it’s renamed as Research Institute of Intelligent Computer Systems. A goal of the Journal is to publish papers with the novel results in Computing Science and Computer Engineering and Information Technologies and Software Engineering and Information Systems within the Journal topics. The official language of the Journal is English; also papers abstracts in both Ukrainian and Russian languages are published there. The issues of the Journal are published quarterly. The Editorial Board consists of about 30 recognized worldwide scientists.
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