基于各种支持向量机核的在线学习政策舆情分类

None Husni, None Arif Muntasa, None Mochamad Dani Hartanto
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摘要

2019冠状病毒病大流行给教育部门带来了重大变化。政府颁布了一项政策,规定学习必须在家进行。这一政策引发了教师和学生的争论,在社交媒体上,尤其是推特上,出现了赞成和反对的意见。民意情绪分析是一项有趣的研究。标准的分类算法,如k近邻、naïve贝叶斯、决策树、随机森林和支持向量机(SVM),可以在短时间内对这些意见进行分类,并且精度很高。许多研究表明,SVM比其他所有分类方法都更准确。支持向量机使用核函数工作,包括线性、多项式和径向基函数(RBF),每个核函数需要不同的参数。线性核只需要一个参数,即c (Cost)。RBF核需要两个参数,c和γ,而多项式核需要两个参数,c和度。支持向量机对这些参数没有默认值,是根据经验和实验得出的。参数范围越广,分类器获得最优值的可能性越大。本研究尝试了基于情感的文本分类中支持向量机核的一些参数值。使用5重交叉验证和混淆矩阵的测试表明,线性核支持向量机提供了最好的性能,准确率在84%以上。
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Classification of Public Opinion on Online Learning Policies using Various Support Vector Machine’s Kernel
The COVID-19 pandemic has resulted in significant changes in the education sector. The government issued a policy so that learning must be carried out online from home. This policy became a polemic for teachers and students so that pro and con opinions emerged on social media, especially Twitter. Sentiment analysis of public opinion is an interesting study. Standard classification algorithms such as k-Nearest neighbours, naïve bayes, decision tree, random forest, and support vector machine (SVM) can categorize these opinions in a short time with good accuracy. Many studies show that SVM is more accurate than all other classification methods. SVM works using kernels, including Linear, Polynomial and Radial Basis Functions (RBF) where each kernel requires different parameters. The linear kernel only requires one parameter, namely c (Cost). The RBF kernel requires 2 parameters, c and ɣ (gamma) while the Polynomial kernel uses 2 parameters, c and degrees. SVM does not have default values for these parameters and are based on experience and experimentation. The wider the range of parameters, the more likely the classifier obtains the optimal values. This study tries some parameters values of SVM kernels for text classification based on sentiment. Testing using 5-fold cross validation and confusion matrix show that SVM with a linear kernel provides the best performance with an accuracy of above 84%.
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