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Category-Based Filtering and User Stereotype Cases to Reduce the Latency Problem in Recommender Systems

机译:基于类别的筛选和用户构造型案例,以减少推荐系统中的延迟问题

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Collaborative filtering is an often successful method for personalized item selection in Recommender systems. However, in domains where items are frequently added, collaborative filtering encounters the latency problem. Characterized by the system's inability to select recently added items, the latency problem appears because new items in a collaborative filtering system must be reviewed before they can be recommended. Content-based filtering may help to counteract this problem, but runs the risk of only recommending items almost identical to the ones the user has appreciated before. In this paper, a combination of category-based filtering and user stereotype cases is proposed as a novel approach to reduce the latency problem. Category-based filtering puts emphasis on categories as meta-data to enable quicker personalization. User stereotype cases, identified by clustering similar users, are utilized to decrease response times and improve the accuracy of recommendations when user information is incomplete.
机译:协作过滤是推荐系统中个性化项目选择的一种通常成功的方法。但是,在经常添加项目的域中,协作过滤会遇到延迟问题。由于系统无法选择最近添加的项目,因此出现了延迟问题,因为在推荐协作过滤系统中的新项目之前,必须对其进行审查。基于内容的过滤可能有助于解决此问题,但存在仅推荐与用户之前喜欢的商品几乎相同的商品的风险。在本文中,提出了一种基于类别的过滤和用户构造型案例的组合,作为减少等待时间问题的新方法。基于类别的过滤将重点放在作为元数据的类别上,以实现更快的个性化。当用户信息不完整时,通过对相似用户进行聚类来识别的用户构造型案例可减少响应时间并提高建议的准确性。

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