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Sentiment Analysis of Student Review in Learning Management System Based on Sastrawi Stemmer and SVM-PSO

机译:基于Sastrawi Stemmer和SVM-PSO的学习管理系统中学生评语的情感分析

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In the learning management system, there are reviews from students of the learning process that has been done in a period. In this case, we use the review dataset to conduct sentiment analysis. The challenge of this dataset is the number of words that contain abbreviations and are not standard. So it challenges us to test the level of accuracy in the sentiment analysis process using several classification methods and sastrawi stemmer. Sastrawi stemmer is used to reduce features without changing the meaning data, Basic function of sastrawi is change words in the basic and eliminate nonessential or non-standard words with filtering concept. In the classification process, we use the SVM-PSO algorithm and compare it with other popular classification methods such as SVM, Naive Bayes and KNN. SVM-PSO is a combination of algorithms that is good to handle data with large dimensions and binary classification types. This is our reason for using SVM-PSO as the main classifer. Experimental results show that the use of sastrawi stemmer can reduce features by 32.58%. The accuracy of the classification process using SVM-PSO of 82.27% (with sastrawi stemmer) and 82.09% (without sastrawi stemmer), these results indicate that sastrawi stemmer influences the results of classification. SVM-PSO classification method has the highest level of accuracy compared to other classification methods, namely Naive Bayes gets an accuracy of 69.73%, K-NN gets an accuracy of 77.67% and SVM gets an accuracy of 81.52%. Based on the experimental results, SVM-PSO method has the best accuracy than any other method, and Sastrawi stemmer influences the level of accuracy.
机译:在学习管理系统中,有学生对一段时间内完成的学习过程的评论。在这种情况下,我们使用评论数据集进行情感分析。该数据集面临的挑战是包含缩写但不标准的单词的数量。因此,挑战我们使用几种分类方法和sastrawi stemmer在情感分析过程中测试准确性的水平。 Sastrawi词干分析器用于在不更改含义数据的情况下减少特征。sastrawi的基本功能是在基本单词中进行更改,并通过过滤概念消除不必要的或非标准的单词。在分类过程中,我们使用SVM-PSO算法,并将其与其他流行的分类方法(例如SVM,朴素贝叶斯和KNN)进行比较。 SVM-PSO是算法的组合,非常适合处理大尺寸和二进制分类类型的数据。这就是我们使用SVM-PSO作为主要分类器的原因。实验结果表明,使用sastrawi茎秆可以减少32.58%的特征。使用SVM-PSO进行分类过程的准确性分别为82.27%(使用sastrawi阻止程序)和82.09%(不使用sastrawi阻止程序),这些结果表明sastrawi阻止程序会影响分类结果。与其他分类方法相比,SVM-PSO分类方法的准确性最高,即朴素贝叶斯(Naive Bayes)的准确性为69.73%,K-NN的准确性为77.67%,SVM的准确性为81.52%。根据实验结果,SVM-PSO方法比其他任何方法都具有最佳的准确性,而Sastrawi stemmer会影响准确性的水平。

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