Web Based Book Recommendation System Using Collaborative Filtering

Ketaki Mankar, Shruti Pawar, Harsh Agarwal, Tejas Sangale, Smita Kulkarni
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引用次数: 0

Abstract

Recommender systems are tools that help end users recommend products and obtain information about their preferences by going online. Today's online bookstores compete with each other in a variety of ways. One of the most powerful ways to efficiently increase revenue by attracting customers is a referral system. This study offers a clear, understandable method for recommending books that aids readers in selecting the best book. The proposed methodology works on training of database and feedback to provide meaningful information that helps users make decisions. In this paper recommendation system is developed by using collaborative filtering method. The machine learning (ML) model KNN is proposed to categorize the books as per user preferences. The overall architecture of the proposed system is introduced and its implementation is demonstrated.
基于网络的协同过滤图书推荐系统
推荐系统是帮助终端用户推荐产品并通过上网获取他们偏好信息的工具。今天的网上书店以各种各样的方式相互竞争。通过吸引客户有效增加收入的最有效方法之一是推荐系统。这项研究提供了一种清晰易懂的推荐书籍的方法,帮助读者选择最好的书。所建议的方法是训练数据库和反馈,以提供有意义的信息,帮助用户做出决策。本文采用协同过滤的方法开发推荐系统。提出了机器学习(ML)模型KNN,根据用户偏好对图书进行分类。介绍了该系统的总体结构,并对其实现进行了演示。
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