Sentiment Analysis of Product Reviews as A Customer Recommendation Using the Naive Bayes Classifier Algorithm

T. Hariguna, Wiga Maaulana Baihaqi, Aulia Nurwanti
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引用次数: 14

Abstract

In an e-commerce Shopee, the process of selling and buying continues to run every day, and the comments given by consumers will increase more and more. Comments given by consumers will be the reference/review of a product that has been purchased by consumers. Consumers freely provide a review containing positive comments and negative comments in the Comments field listed on the Shopee e-commerce website. With the above problems, researchers will do a research with the method of sentiment analysis to distinguish classes in product review comments that include positive comment class or negative comment class using a combination of K-means and naive Bayes classifier. K-means used to determine the grouping of classes; naive Bayes classifier used to get the value of accuracy. The results obtained based on clustering K-means include getting 116 negative comments on product reviews and 37 negative comments product reviews. Accuracy results obtained from product review comment data of 77.12%. Thus, the accuracy value using K-means and naive Bayes classifier without manual data get a higher accuracy value is compared using K-means, Naive Bayes classifier, and manual data get results lower accuracy of 56.86%. From the results above the most comments is a negative comment of 116 data review comments product, from the results of the study can be concluded that one of the products of Spatuafa named high heels women know the Ribbon Ikat FX18 the condition of the product is not good enough due to the high negative comments compared to positive comments
基于朴素贝叶斯分类器的产品评论情感分析
在电商Shopee中,每天都在不断地进行着买卖的过程,消费者给出的评价也会越来越多。消费者给出的评论将是对消费者购买的产品的参考/评论。消费者可以在Shopee电子商务网站的“评论”栏中自由发表正面评论和负面评论。针对上述问题,研究人员将使用情感分析的方法进行研究,使用K-means和朴素贝叶斯分类器相结合的方法来区分产品评论评论中的正面评论类和负面评论类。K-means用于确定类别的分组;用朴素贝叶斯分类器得到精度值。基于聚类K-means得到的结果包括产品评论差评116条,差评产品评论37条。从产品评审评论数据中获得的准确率为77.12%。由此可见,使用K-means和朴素贝叶斯分类器得到的准确率值比使用K-means、朴素贝叶斯分类器和手工数据得到的准确率值要低,准确率为56.86%。从上面的结果来看,评论最多的是差评产品的116条数据,从研究的结果可以得出结论,其中一款名为Spatuafa的高跟鞋女性知道Ribbon Ikat FX18,由于产品的状况不够好,差评高于好评
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