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Social Media Sentiment Analysis Using K-Means and Naïve Bayes Algorithm

机译:基于K均值和朴素贝叶斯算法的社交媒体情感分析

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Opinions are a major influence when making decisions for individuals or organizations. A collection of opinions can be extracted to gain useful knowledge. This knowledge is used as a source of information which can be used as a consideration in decision making. The extraction of knowledge from text has been known as text mining. Text mining has any kinds of algorithm to extract information from collected text, such as K-Means, K-Nearest Neighbors, Naïve Bayes, and the others. One of the sources of opinion is from social media, especially Facebook and Twitter. On Facebook and Twitter, many people have been writing their opinions about many things. This very much data are difficult to analyze thoroughly. In this paper, K-Means and Naïve Bayes algorithm are developed to analyze public opinions or sentiments. Outlier removal is also added to this analysis. Opinions are taken from Facebook and Twitter. The accuracy of the system is tested 10 times at k different points for each k value (k=6, 7, 8, 9 and 10). As the result, the combination of K-Means and Naïve Bayes has lower accuracy than the accuracy produced by Naïve Bayes without the combination of K-Means, but almost same accuracies. The accuracy of Naïve Bayes algorithm is from 80.526%-82.500%, while the combination of Naïve Bayes and K-Means has 80.323%-81.523% accuracy.
机译:在为个人或组织做出决策时,意见是主要的影响力。可以提取意见收集以获得有用的知识。这些知识用作信息来源,可以用作决策时的考虑因素。从文本中提取知识被称为文本挖掘。文本挖掘具有从收集的文本中提取信息的各种算法,例如K均值,K最近邻,朴素贝叶斯等。意见来源之一来自社交媒体,尤其是Facebook和Twitter。在Facebook和Twitter上,许多人一直在写他们对许多事情的看法。这很多数据很难彻底分析。在本文中,K-Means和朴素贝叶斯算法被开发来分析舆论或情感。离群值去除也被添加到该分析中。意见来自Facebook和Twitter。对于每个k值(k = 6、7、8、9和10),在k个不同的点测试系统的精度10次。结果,K-Means和朴素贝叶斯的组合的准确性低于没有K-Means组合但几乎相同的精度的朴素贝叶斯产生的准确性。朴素贝叶斯算法的准确性为80.526%-82.500%,而朴素贝叶斯和K-Means的组合具有80.323%-81.523%的准确性。

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