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Enhancing comment Feedback classification using text classifiers with word centrality measures

机译:使用带有词集中度的文本分类器增强评论反馈分类

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This paper presents a novelty of item's feedback classification in e-commerce systems. This proposed work is developed based on a combination between a text classifier and word centrality measures. Herein, the item's feedback means comments written by customers to the purchased items, which are classified into positive or negative comments. In this work, the suitable text classifier is selected from four major types of classification: Rule-based, Tree structure-based, Probability-based, and Learning-based, which are Conjunctive Rule, Random Forest, Bayesian Logistic Regression, and Support Vector Machine, respectively. In this work, the classifiers are used for identifying the feedbacks in the probability distribution value [0, 1]. On the other hand, items' feedbacks are also represented by a graph, which is presenting a relationship among words. As well as, centrality measures are applied to determine each contained word centrality, and finalize to a probability centrality in [0, 1]. Both probability distribution and probability centrality, here, are applied to classify the item's feedback to positive or negative comments. The simulation results showed that the proposed classification method was efficient to classify three benchmark datasets, compared to other existing approaches with an average of classification accuracy 80.9%.
机译:本文提出了电子商务系统中项目反馈分类的新颖性。这项拟议的工作是基于文本分类器和单词中心度度量的组合而开发的。在此,物品的反馈是指顾客对所购物品的评论,分为正面评论或负面评论。在这项工作中,合适的文本分类器是从四种主要分类中选择的:基于规则,基于树结构,基于概率和基于学习,它们是合取规则,随机森林,贝叶斯逻辑回归和支持向量机分别。在这项工作中,分类器用于识别概率分布值[0,1]中的反馈。另一方面,项目的反馈也由图形表示,该图形表示单词之间的关系。同样,采用中心性度量来确定每个包含的单词中心性,并最终确定为[0,1]中的概率中心性。此处,概率分布和概率中心性都可用于将项目的反馈分类为正面或负面评论。仿真结果表明,与现有的其他方法相比,该方法能够有效地对三个基准数据集进行分类,平均分类精度为80.9%。

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