Evaluation of Supervised Classification Techniques on Twitter Data using R

Annie Syrien, M. Hanumanthappa, K. Ravikumar
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Abstract

The phenomenal development of the World Wide Web has resulted in enormous social networking sites producing tremendous data on web 2.0. Social networking sites have widened to a higher degree of use, in which any field of information can be sort by researchers. Data obtained from social media has strategized from many new machine learning algorithms and natural language processing. The data is unstructured; mining the data leads to finding important sentiments about various entities via appropriate classification techniques. In this paper, tweets’ opinions are analyzed through machine learning algorithms such as naive Bayes and support vector machines using R programming; results are computed and compared. The SVM model manifests the higher precision, and naïve Bayes provides higher accuracy for sentiment analysis on the Bengaluru traffic data.
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基于R的Twitter数据监督分类技术评价
万维网的惊人发展导致了大量的社交网站在web2.0上产生了大量的数据。社交网站的使用范围已经扩大到更高的程度,研究人员可以对任何领域的信息进行分类。从社交媒体获得的数据已经通过许多新的机器学习算法和自然语言处理进行了策略化处理。数据是非结构化的;挖掘数据可以通过适当的分类技术找到关于各种实体的重要情感。本文使用R编程,通过朴素贝叶斯和支持向量机等机器学习算法分析推文的观点;对结果进行了计算和比较。SVM模型表现出更高的精度,naïve贝叶斯对班加罗尔交通数据的情感分析提供了更高的精度。
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