From Helpfulness Prediction to Helpful Review Retrieval for Online Product Reviews

C. Vo, Dung Duong, Duy Nguyen, T. Cao
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引用次数: 10

Abstract

Nowadays, online product reviews belong to a valuable data source for customers in e-commerce. They provide customers with helpful details about a given product before customers make a decision on purchasing that product. Nevertheless, in this regard, if the e-commerce system returns too many reviews to customers and the reviews are not well presented in a relevant manner, the reviews might become cumbersome and time-consuming. In this paper, we define a helpful review retrieval task to support the customers by returning a ranked list of helpful reviews according to their helpfulness about the product of their interest. For an effective solution to the task, we also propose a method with an enhanced list of features for review representation and a multiple linear regression model using the elastic net regularization method. Our method is comprehensive as examining the task in its entirety from review's helpfulness prediction to helpful review retrieval for online product reviews. Evaluated on a real world Amazon dataset of the reviews about electronic devices, our method outperforms the others with the best values: 0.8 for the Normalized Discounted Cumulative Gain measure and 0.83 for the Accuracy measure. Such promising experimental results confirm the effectiveness of our method for the task.
在线产品评论从有用性预测到有用性评论检索
在当今的电子商务中,网上的产品评论是消费者宝贵的数据来源。他们在顾客决定购买某一产品之前,向顾客提供有关该产品的有用细节。然而,在这方面,如果电子商务系统向客户返回过多的评论,并且这些评论没有很好地以相关的方式呈现,则可能会变得繁琐和耗时。在本文中,我们定义了一个有用评论检索任务来支持客户,根据他们对感兴趣的产品的帮助程度返回一个有用评论的排名列表。为了有效地解决这个问题,我们还提出了一种具有增强特征列表的方法来表示评论,并使用弹性网络正则化方法建立了一个多元线性回归模型。我们的方法是全面的,从评论的有用性预测到在线产品评论的有用评论检索,从整体上检查任务。在亚马逊关于电子设备评论的真实世界数据集上进行评估后,我们的方法以最佳值优于其他方法:标准化贴现累积增益度量为0.8,精度度量为0.83。这些有希望的实验结果证实了我们的方法对任务的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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