基于印尼语新闻分类的推文自动分类

Jaka E. Sembodo, E. B. Setiawan, M. Bijaksana
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引用次数: 4

摘要

推文与新闻文章一样具有信息性,基于新闻类别的自动推文分类器可以方便地根据某一有趣类别搜索推文。我们将其划分为11个类别:宗教、商业、娱乐、法律和犯罪、健康、动机、体育、政府、教育、政治和技术。在学习过程中,我们使用了ZeroR、朴素贝叶斯多项式(NBM)、支持向量机(SVM)、随机森林(RF)和顺序最小优化(SMO)算法,这些算法都是基于与本文主题相似的前人工作。在实验中,我们使用所有tweet和每个类别中的各种tweet和术语的最大数量来实验分类器。在评估性能系统时,我们使用了10倍交叉验证,并使用准确性(正确分类的实例)作为性能参数。在实验结果中,当每个类别中推文和术语的最大数量为500条推文和1000个术语时,NBM表现出最高的性能,准确率为77.47%。最后,我们使用NBM构建了自动推文分类器,由于该分类器和实验结果在基于web的编程中表现出最好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Tweet Classification Based on News Category in Indonesian Language
Tweet is being informative as well as news articles, so that the automatic tweet classifier based on news category could be useful to make ease in searching tweet based on certain interesting category. We identified those are 11 categories: religion, business, entertainment, law and crime, health, motivation, sport, government, education, politics and technology. In the learning process, we use ZeroR, Naive Bayes Multinomial (NBM), Support Vector Machine (SVM), Random Forest (RF) and Sequential Minimal Optimization (SMO) algorithm based on previous work that has similar topic with this paper. In experiments, we experiment classifier using all tweet and various maximum number of tweets and terms in each category. In evaluating performance system, we used 10-fold cross validation and use accuracy (correctly classified instances) as performance paramater. In the experiments result, NBM performs the highest performance with 77,47% accuracy with maximum number of tweets and terms in every category is 500 tweets and 1000 terms. At the last, we built automatic tweet classifier with NBM due to this classifier and experiment result perform the best performances using web-based programming.
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