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Cross-Domain Helpfulness Prediction of Online Consumer Reviews by Deep Learning Model

机译:深度学习模型对在线消费者评论的跨域帮助预测

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Customer reviews provide helpful information such as usage experiences or critiques; these are critical information resource for future customers. Since the amount of online review is getting bigger, people need a way to find the most helpful ones automatically. Previous studies addressed on the prediction of the percentage of the helpfulness voting results based on a regression model or classified them into a helpful or unhelpful classes. However, the voting result of an online review is not a constant over time, and we also find that there are many reviews getting zero vote. Therefore, we collect the voting results of the same online customer reviews over time, and observe the change of votes to find a better learning target. We collected a dataset with online reviews in five different product categories (“Apple”, “Video Game”, “Clothing, Shoes & Jewelry”, “Sports & Outdoors”, and “Prime Video”) from Amazon.com with the voting result on the helpfulness of the reviews, and monitor the helpfulness voting for six weeks. Experiments are conducted on the dataset to get a reasonable classification on the zero and non-zero vote reviews. We construct a classification system that can classify the online reviews via the deep learning model BERT. The results show that the classifier can get good result on the helpfulness prediction. We also test the classifier on cross-domain prediction and get promising results.
机译:客户评论提供有用的信息,例如使用经验或评论;这些是未来客户的关键信息资源。由于在线评论的数量越来越大,人们需要一种自动找到最有用的评论的方法。先前的研究针对基于回归模型的对有帮助投票结果的百分比的预测,或将其分为有用或不有用的类别。但是,在线评论的投票结果并不是随时间变化的,我们还发现许多评论的投票为零。因此,随着时间的推移,我们收集同一在线客户评论的投票结果,并观察投票的变化以找到更好的学习目标。我们从Amazon.com收集了具有五个不同产品类别(“苹果”,“视频游戏”,“服装,鞋子和珠宝”,“运动与户外”和“主要视频”)的在线评论数据集,并给出了投票结果评估评论的有用性,并监控投票的有效性,持续六个星期。对数据集进行实验,以对零和非零投票评论进行合理分类。我们构建了一个分类系统,可以通过深度学习模型BERT对在线评论进行分类。结果表明,分类器在有用性预测中可以取得较好的效果。我们还在跨域预测上测试了分类器,并获得了可喜的结果。

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