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Learning to Recommend Product with the Content of Web Page

机译:学习用网页内容推荐产品

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Recommender systems improve access to relevant products and information by making suggestions based on page ranking technology. Existing approaches to learning to rank, however, did not consider the pages in the deep web which have valuable information. In this paper, we present a novel product recommendation algorithm based on the content of web pages including the product information and customer reviews. Our algorithm uses the customer reviews to calculate the score of dynamic web pages. The paper further focus on classifying the semantic orientation of the customer reviews through a progressed Bayesian Classifier and calculating the support value of each review. In addition, we also analyze the change tendency of customer reviews based on the temporal dimension. Experimental results shows that this approach can produce accurate recommendations.
机译:推荐器系统通过基于页面排名技术提出建议来改善对相关产品和信息的访问。但是,现有的学习排名方法并没有考虑深层网络中包含有价值信息的页面。在本文中,我们基于网页的内容(包括产品信息和客户评论)提出了一种新颖的产品推荐算法。我们的算法使用客户评论来计算动态网页的得分。本文还着重于通过改进的贝叶斯分类器对客户评论的语义定向进行分类,并计算每个评论的支持价值。此外,我们还根据时间维度分析客户评论的变化趋势。实验结果表明,该方法可以产生准确的建议。

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