综合少数派过采样技术(SMOTE)、特征表示和分类算法对不平衡情感分析的影响

W. Satriaji, R. Kusumaningrum
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引用次数: 14

摘要

就网上酒店预订服务所收到的意见,是酒店服务提供者(包括酒店经理和酒店经营者)可以利用的重要资源,以控制酒店预订服务的质素。重要的是,这有助于提高客户满意度和酒店回头率。在本研究中,使用情感分析(SA)来分析从顾客那里收到的评论。然而,存在一些与情景分析相关的问题,如每一类数据的数量不等(不平衡数据集)、分类算法和特征表示。使用SMOTE(合成少数过采样技术),本研究旨在调查该技术如何平衡来自每个班级的数据量;Naïve贝叶斯(NB)、逻辑回归(LR)和支持向量机(SVM)分类算法。也使用;术语存在(TO)、术语出现(TO)和术语频率-逆文档频率(TF-IDF)特征表示来衡量对情感分析性能的影响。研究结果发现,当数据不平衡时,使用SMOTE可以有效地提高模型的分类性能,平均模型性能提高约12%。此外,TO的特征表征平均占G-mean Score的81.68%,TP为79.89%,TF-IDF为79.31%。在分类算法中,LR的平均得分为g-mean得分的81.65%,其次是SVM的81.55%,NB的77.68%。
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Effect of Synthetic Minority Oversampling Technique (SMOTE), Feature Representation, and Classification Algorithm on Imbalanced Sentiment Analysis
The comments received on Internet-based online hotel reservation services are an important resource that can be utilised by hotel service providers including hotel managers' and hoteliers' for exercising quality control measures in their hotel reservation service. Importantly this contributes towards increased customer satisfaction and hotel revisits. In this study, Sentiment Analysis (SA) is used to analyse the comments received from customers. However, there are several problems associated with SA such as the unequal number of each class of data (imbalanced datasets), the classification algorithm and the feature representation. Using SMOTE (Synthetic Minority Oversampling Technique) this research aims to investigate how this technique balances the amount of data from each class employing; the Naïve Bayes (NB), Logistic Regression (LR), and Support Vector Machine (SVM) classification algorithms. And also using; term presence (TO), term occurrence (TO), and Term Frequency-Inverse Document Frequency (TF-IDF) feature representations to gauge the effect on the performance of sentiment analysis. The findings from the study found that the use of SMOTE was effective in improving the model's classification performance when data is imbalanced, as evidenced by the average model performance improvement of approximately 12 %. Furthermore, feature representation of TO resulted in an average of 81.68 % of the G-mean Score, followed by TP of 79.89 %, and TF-IDF 79.31 %. As for the classification algorithm, LR resulted in an average score of 81.65 % of the g-mean score, followed by SVM 81.55 %, and NB of 77.68 %.
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