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首页> 外文期刊>International Journal of Web-Based Learning and Teaching Technologies >Providing Personalized Services to Users in a Recommender System
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Providing Personalized Services to Users in a Recommender System

机译:在推荐系统中为用户提供个性化服务

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摘要

Instructors recommend learning materials to a class of students not minding the learning ability and reading habit of each student. Learners are finding it problematic to make a decision about which available learning materials best meet their situation and will be beneficial to their course of study. In order to address this challenge, a new e-learning material recommender system that is able to recommend quality items to learners individually is required. The aim of this work is to develop a Personalized Recommender System that switches between Content-based and Collaborative filtering techniques, with an objective to design an algorithm to recommend electronic library materials, as well as personalize recommendations to both new and existing users. Experiments were conducted with evaluations showing that the recommender system was most effective when content-based filtering and collaborative filtering were used to recommend items for new users and existing users respectively, and still achieve personalization.
机译:讲师向那些不介意每个学生的学习能力和阅读习惯的学生推荐学习材料。学习者发现,要决定哪种可用的学习材料最适合他们的情况并且对他们的学习课程有利,这是一个难题。为了应对这一挑战,需要一种新的电子学习材料推荐器系统,该系统能够向学习者单独推荐优质的物品。这项工作的目的是开发一种可在基于内容的过滤和协作过滤技术之间切换的个性化推荐系统,其目的是设计一种算法来推荐电子图书馆资料,以及对新用户和现有用户进行个性化推荐。进行的评估实验表明,当基于内容的过滤和协作过滤分别为新用户和现有用户推荐项目时,推荐器系统最为有效,并且仍实现个性化。

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