Review Helpfulness Prediction Using Convolutional Neural Networks and Gated Recurrent Units

Mohammad Ehsan Basiri, Shirin Habibi
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引用次数: 6

Abstract

Product reviews are one of the most important types of user-generated contents that are becoming more and more available. These reviews are valuable sources of knowledge for users who want to make purchasing decisions and for producers who want to improve their products and services. However, not all product reviews are equally helpful and this makes the process of finding helpful reviews among the massive number of similar reviews very challenging. To address this problem, automatic review helpfulness prediction systems are designed to classify reviews according to their content. In this study, a deep model is proposed to utilize content-based, semantic, sentiment, and metadata features of reviews for predicting review helpfulness. In the proposed method, convolution layer is used for learning feature maps and gated recurrent units are employed for exploiting sequential context. The results of comparing the proposed method with five traditional learning methods and two deep models trained on the same types of features shows that the proposed method outperforms other methods by 4% and 2% in terms of F1-measure and accuracy. Moreover, results reveal that both textual and metadata features are important in detecting helpful reviews. The findings of this study may help online retailers to efficiently rank the product reviews.
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回顾使用卷积神经网络和门控循环单元的有用性预测
产品评论是用户生成内容中最重要的类型之一,它变得越来越可用。对于想要做出购买决定的用户和想要改进产品和服务的生产者来说,这些评论是有价值的知识来源。然而,并不是所有的产品评论都同样有用,这使得在大量类似评论中找到有用评论的过程非常具有挑战性。为了解决这个问题,自动评论帮助预测系统被设计成根据评论的内容对它们进行分类。在这项研究中,提出了一个深度模型来利用基于内容的、语义的、情感的和元数据特征来预测评论的有用性。在该方法中,使用卷积层来学习特征映射,使用门控循环单元来利用序列上下文。将本文方法与5种传统学习方法和2种基于相同类型特征训练的深度模型进行比较,结果表明,本文方法在f1测度和准确率方面分别优于其他方法4%和2%。此外,结果表明文本和元数据特征在检测有用评论时都很重要。本研究的发现可能有助于在线零售商有效地对产品评论进行排名。
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