图书推荐系统采用基于内容和协同过滤的方法

Praveen Mathew, B. Kuriakose, V. Hegde
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引用次数: 64

摘要

在线推荐系统已经成为一种趋势。现在的一天,而不是出去为自己买东西,理由是,在线推荐提供了一个更容易和更快的方式来购买物品和交易也很快,当它在网上完成。推荐系统是一项强大的新技术,它可以帮助用户找到他们想要购买的物品。推荐系统广泛用于向最终用户推荐最合适的产品。如今,在线图书销售网站通过多种属性相互竞争。推荐系统是增加利润和留住买家的最有力工具之一。现有的系统导致提取不相关的信息,导致用户满意度不足。本文提出了一种基于内容过滤(CBF)、协同过滤(CF)和关联规则挖掘相结合的图书推荐系统(BRS)。为此,我们提出了一种混合算法,其中我们结合了两种或多种算法,因此它有助于推荐系统根据购买者的兴趣推荐书籍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Book Recommendation System through content based and collaborative filtering method
The online recommendation system has become a trend. Now a days rather than going out and buying items for themselves, reason being, online recommendation provides an easier and quicker way to buy items and transactions are also quick when it is done online. Recommended systems are powerful new technology and it helps users to find items which they want to buy. A recommendation system is broadly used to recommend products to the end users that are most appropriate. Online book selling Web sites now-a-days is competing with each other by considering many attributes. A recommendation system is one of the strongest tools to increase profits and retaining buyer. The existing systems lead to extraction of irrelevant information and lead to lack of user satisfaction. This paper presents Book Recommendation System (BRS) based on combined features of content based filtering (CBF), collaborative filtering (CF) and association rule mining to produce efficient and effective recommendation. For this we are proposing a hybrid algorithm in which we combine two or more algorithms, so it helps the recommendation system to recommend the book based on the buyer's interest.
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