Towards personal learning environment by enhancing adaptive access to digital library using ontology-supported collaborative filtering

IF 3.4 3区 管理学 0 INFORMATION SCIENCE & LIBRARY SCIENCE
V. Senthil Kumaran, R. Latha
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引用次数: 4

Abstract

PurposeThe purpose of this paper is to provide adaptive access to learning resources in the digital library.Design/methodology/approachA novel method using ontology-based multi-attribute collaborative filtering is proposed. Digital libraries are those which are fully automated and all resources are in digital form and access to the information available is provided to a remote user as well as a conventional user electronically. To satisfy users' information needs, a humongous amount of newly created information is published electronically in digital libraries. While search applications are improving, it is still difficult for the majority of users to find relevant information. For better service, the framework should also be able to adapt queries to search domains and target learners.FindingsThis paper improves the accuracy and efficiency of predicting and recommending personalized learning resources in digital libraries. To facilitate a personalized digital learning environment, the authors propose a novel method using ontology-supported collaborative filtering (CF) recommendation system. The objective is to provide adaptive access to learning resources in the digital library. The proposed model is based on user-based CF which suggests learning resources for students based on their course registration, preferences for topics and digital libraries. Using ontological framework knowledge for semantic similarity and considering multiple attributes apart from learners' preferences for the learning resources improve the accuracy of the proposed model.Research limitations/implicationsThe results of this work majorly rely on the developed ontology. More experiments are to be conducted with other domain ontologies.Practical implicationsThe proposed approach is integrated into Nucleus, a Learning Management System (https://nucleus.amcspsgtech.in). The results are of interest to learners, academicians, researchers and developers of digital libraries. This work also provides insights into the ontology for e-learning to improve personalized learning environments.Originality/valueThis paper computes learner similarity and learning resources similarity based on ontological knowledge, feedback and ratings on the learning resources. The predictions for the target learner are calculated and top N learning resources are generated by the recommendation engine using CF.
利用本体支持的协同过滤增强对数字图书馆的自适应访问,构建个性化学习环境
目的为数字图书馆提供学习资源的自适应访问。提出了一种基于本体的多属性协同过滤方法。数字图书馆是完全自动化的,所有资源都是数字形式的,并以电子方式向远程用户和传统用户提供对现有信息的访问。为了满足用户的信息需求,大量的新创建的信息在数字图书馆中以电子方式发布。虽然搜索应用程序在不断改进,但对于大多数用户来说,找到相关信息仍然很困难。为了获得更好的服务,框架还应该能够根据搜索域和目标学习者调整查询。研究结果提高了数字图书馆个性化学习资源预测和推荐的准确性和效率。为了促进个性化的数字学习环境,作者提出了一种使用本体支持的协同过滤(CF)推荐系统的新方法。目标是提供对数字图书馆学习资源的自适应访问。提出的模型基于基于用户的CF,它根据学生的课程注册、主题偏好和数字图书馆为学生推荐学习资源。除了学习者对学习资源的偏好外,使用本体框架知识来提高语义相似度,并考虑多个属性,提高了模型的准确性。研究局限/启示本工作的结果主要依赖于已开发的本体。更多的实验将与其他领域本体进行。实际意义建议的方法被整合到Nucleus,一个学习管理系统(https://nucleus.amcspsgtech.in)。研究结果引起了数字图书馆的学习者、学者、研究人员和开发人员的兴趣。这项工作还提供了对电子学习本体的见解,以改善个性化的学习环境。原创性/价值本文基于本体论知识、学习资源的反馈和评分计算学习者相似度和学习资源相似度。使用CF计算目标学习者的预测,并由推荐引擎生成top N学习资源。
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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来源期刊
Library Hi Tech
Library Hi Tech INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
8.30
自引率
44.10%
发文量
97
期刊介绍: ■Integrated library systems ■Networking ■Strategic planning ■Policy implementation across entire institutions ■Security ■Automation systems ■The role of consortia ■Resource access initiatives ■Architecture and technology ■Electronic publishing ■Library technology in specific countries ■User perspectives on technology ■How technology can help disabled library users ■Library-related web sites
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