M. E. Purbaya, Diovianto Putra, Maliana Puspa Arum, LU Zian, Nasifah
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引用次数: 2
Abstract
Chips are a well-known product among Small and Medium Enterprises (SMEs). In order to enhance the quality of chips as an SME product, sentiment analysis is a crucial step. In this research, sentiment analysis of chip purchases on the Shopee E-marketplace was conducted using the Natural Language Processing (NLP) method, utilizing the N-Gram Model and Term Frequent-Inverse Document Frequency (TF-IDF) as feature extraction techniques, and the Support Vector Machine (SVM) algorithm for sentiment classification. The objective of this research is to identify the most suitable feature extraction model and optimal SVM kernel type from the options of Linear, Polynomial degree, Gaussian RBF, and Sigmoid kernels. Results from the experiments indicate that the TF-IDF and unigram feature extraction techniques offer the best performance for SVM classification when utilizing the Linear kernel. By labeling the dataset, it was observed that using a lexicon-based approach for sentiment classification resulted in 84.31% of the total reviews being positive. The words "price", "cheap" and "quality" in unigram have the highest weights above 0.040. In the unigram model, linear kernel accuracy and precision performance values are 88.4% and 87.3%. At the same time, the recall performance values is 88.4%. The results of the F1-Score assessment matrix from Unigram were 86.9%, Bigram was 78.5% and Trigram was 77.4%. Ultimately, the unigram model combined with a linear kernel in the SVM algorithm demonstrates strong potential for application in the development of various systems focused on detecting user reviews in the Indonesian language on the Shopee E-Marketplace.
芯片是中小企业所熟知的产品。为了提高芯片作为中小企业产品的质量,情绪分析是至关重要的一步。本研究采用自然语言处理(NLP)方法,利用N-Gram模型和Term Frequency - inverse Document Frequency (TF-IDF)作为特征提取技术,利用支持向量机(SVM)算法进行情感分类,对Shopee E-marketplace上的芯片购买行为进行情感分析。本研究的目的是从线性、多项式度、高斯RBF和Sigmoid核的选项中识别出最合适的特征提取模型和最优的SVM核类型。实验结果表明,当使用线性核时,TF-IDF和单图特征提取技术为SVM分类提供了最好的性能。通过标记数据集,可以观察到使用基于词典的方法进行情感分类导致84.31%的评论是积极的。uniggram中“price”、“cheap”和“quality”的权重在0.040以上。在单图模型中,线性核精度和精度性能值分别为88.4%和87.3%。同时召回性能值为88.4%。Unigram的F1-Score评估矩阵结果为86.9%,Bigram为78.5%,Trigram为77.4%。最终,unigram模型与SVM算法中的线性核相结合,显示出强大的应用潜力,可用于开发各种专注于检测Shopee E-Marketplace上印尼语用户评论的系统。