Web-based personalized hybrid book recommendation system

S. Kanetkar, Akshay Nayak, Sridhar Swamy, G. Bhatia
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引用次数: 27

Abstract

Recommender Systems have been around for more than a decade now. Choosing what book to read next has always been a question for many. Even for students, deciding which textbook or reference book to read on a topic unknown to them is a big question. In this paper, we try to present a model for a web-based personalized hybrid book recommender system which exploits varied aspects of giving recommendations apart from the regular collaborative and content-based filtering approaches. Temporal aspects for the recommendations are incorporated. Also for users of different age, gender and country, personalized recommendations can be made on these demographic parameters. Scraping information from the web and using the information obtained from this process can be equally useful in making recommendations.
基于web的个性化混合图书推荐系统
推荐系统已经存在了十多年了。选择接下来读什么书对很多人来说都是一个问题。即使对学生来说,对于一个他们不熟悉的话题,决定读哪本教科书或参考书也是一个大问题。在本文中,我们试图提出一个基于web的个性化混合图书推荐系统模型,该模型利用了除了常规协作和基于内容的过滤方法之外的各种推荐方法。纳入了建议的时间方面。此外,对于不同年龄、性别和国家的用户,可以根据这些人口统计参数进行个性化推荐。从网络上抓取信息并使用从这个过程中获得的信息在提出建议方面同样有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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