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Recommendation for New Users with Partial Preferences by Integrating Product Reviews with Static Specifications

机译:通过使用静态规格整合产品评论,为新用户提供部分偏好

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Recommending products to new buyers is an important problem for online shopping services, since there are always new buyers joining a deployed system. In some recommender systems, a new buyer will be asked to indicate her/his preferences on some attributes of the product (like camera) in order to address the so called cold-start problem. Such collected preferences are usually not complete due to the user's cognitive limitation and/or unfamiliarity with the product domain, which are called partial preferences. The fundamental challenge of recommendation is thus that it may be difficult to accurately and reliably find some like-minded users via collaborative filtering techniques or match inherently preferred products with content-based methods. In this paper, we propose to leverage some auxiliary data of online reviewers' aspect-level opinions, so as to predict the buyer's missing preferences. The resulted user preferences are likely to be more accurate and complete. Experiment on a real user-study data and a crawled Amazon review data shows that our solution achieves better recommendation performance than several baseline methods.
机译:向新买家推荐产品是在线购物服务的重要问题,因为总有新的买家加入了部署的系统。在一些推荐系统中,将要求新买家在产品(如相机)的某些属性上表明她/他的偏好,以解决所谓的冷启动问题。由于用户的认知限制和/或不熟悉与产品域名称为部分偏好,这种收集的偏好通常不完整。因此,建议的根本挑战是,可能难以通过协作过滤技术准确和可靠地找到一些类似的用户,或者通过基于内容的方法匹配固有的优选产品。在本文中,我们建议利用一些在线评论者的方面级别的辅助数据,以预测买方的遗失偏好。由此产生的用户偏好可能更准确和完整。实验对真实的用户学习数据和爬行的亚马逊评论数据显示,我们的解决方案比几种基线方法实现了更好的推荐性能。

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