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Review helpfulness evaluation and recommendation based on an attention model of customer expectation

机译:根据客户期望的注意模式,审查助人的评估和推荐

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With the fast growth of e-commerce, more people choose to purchase products online and browse reviews before making decisions. It is essential to identify helpful reviews, given the typical large number of reviews and the various range of quality. In this paper, we aim to build a model to predict review helpfulness automatically. Our work is inspired by the observation that a customer's expectation of a review can be greatly affected by review sentiment and the degree to which the customer is aware of pertinent product information. Consequently, a customer may pay more attention to that specific content of a review which contributes more to its helpfulness from their perspective. To model such customer expectations and capture important information from a review text, we propose a novel neural network which leverages review sentiment and product information. Specifically, we encode the sentiment of a review through an attention module, to get sentiment-driven information from review text. We also introduce a product attention layer that fuses information from both the target product and related products, in order to capture the product related information from review text. Our experimental results for the task of identifying whether a review is helpful or not show an AUC improvement of 5.4% and 1.5% over the previous state of the art model on Amazon and Yelp data sets, respectively. We further validate the effectiveness of each attention layer of our model in two application scenarios. The results demonstrate that both attention layers contribute to the model performance, and the combination of them has a synergistic effect. We also evaluate our model performance as a recommender system using three commonly used metrics: NDCG@10, Precision@10 and Recall@10. Our model outperforms PRH-Net, a state-of-the-art model, on all three of these metrics.
机译:随着电子商务的快速增长,越来越多的人选择在线购买产品并在做出决定之前浏览评论。鉴于典型的大量评论和各种质量范围,鉴于鉴定有用的评论至关重要。在本文中,我们的目标是建立一个模型,以自动预测审查助人。我们的工作受到了解,观察到客户对审查的期望可以受到审查情绪的大大影响,客户了解相关产品信息的程度。因此,客户可能会更加关注审查的具体内容,从他们的角度来看有更多的乐观。为了模拟这些客户期望并捕获从审查文本中捕获重要信息,我们提出了一种新的神经网络,利用审查情绪和产品信息。具体而言,我们通过注意模块对审查的情绪进行编码,从审查文本获取情绪驱动的信息。我们还介绍了一种产品注意层,可以从目标产品和相关产品中融合信息,以便从审查文本中捕获产品相关信息。我们的实验结果是识别审查是否有用或不显示在亚马逊和yelp数据集上以前的最先进状态的5.4%和1.5%的AUC提高。我们进一步验证了我们模型中每个关注层的有效性在两个应用方案中。结果表明,关注层都有助于模型性能,并且它们的组合具有协同效应。我们还使用三个常用的指标评估我们的模型性能作为推荐系统:NDCG @ 10,Precision @ 10和Recall @ 10。我们的模型优于PRH-Net,最先进的模型,在这些指标中的三个。

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