欺骗性消费者评论分类中特征选择的混合滤波-包装方法

D. Vidanagama, Thushari P. Silva, A. Karunananda
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引用次数: 0

摘要

如今,由于世界的普遍情况,人们非常关注网上交易。在过去几年中,在线交易和通过此类交易产生的几种类型的数据迅速增加。由于没有其他人参与购买决策,顾客通过评论做出购买判断。因此,顾客的评价不仅为决策者的购买决策提供了有价值的信息,也为决策者提供了有价值的信息。考虑到这是一种优势,欺诈性评论者倾向于写评论来推广或降级产品。欺骗性评论可以通过评论者行为特征、内容相关特征或评论特征来识别。但是,提取出来的所有特征可能并不是识别骗子的关键。本研究提出了一种新的过滤器-包装器混合方法来选择最优特征来识别欺骗性的在线客户评论。采用单变量滤波和多变量滤波相结合的方法,以及双向搜索的包装方法来选择特征。使用k -最近邻(KNN)分类器对模型进行评估。与单一的传统方法相比,所提出的混合方法具有最高的模型精度。选择用于模型构建的最优特征是有效的,因为它们在预测欺骗性评论时揭示了最具统计意义的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Filter-Wrapper Approach for Feature Selection in Deceptive Consumer Review Classification
Nowadays, due to the prevailing situation of the world, people are heavily focusing on online transactions. There has been a rapid increase in online transactions and several types of data generated through such transactions during the last few years. As there is no other involvement in purchasing decisions, customers make purchasing judgments through the reviews. Therefore, not only for making purchasing decisions but also customer reviews provide valuable information regarding the products for decision-makers. By considering this as an advantage, fraudulent reviewers tend to write reviews to promote or downgrade products. Deceptive reviews can be identified via reviewer behavioural features, content-related features, or review features. But all the extracted features may not be critical for identifying deceptive. This research introduces a novel filter-wrapper hybrid approach to select optimal features to identify deceptive online customer reviews. A combination of univariate and multivariate filter methods as well as a wrapper method with the bidirectional search were used to select the features. The model was evaluated using the K-Nearest Neighbor (KNN) classifier. The proposed hybrid approach shows the highest model accuracy against the sole traditional approaches. The selected optimal features used for model building are effective as they reveal the most statistically significant features when predicting the deceptive reviews..
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