Issues and Challenges in the Extraction and Mapping of Linked Open Data Resources with Recommender Systems Datasets

Q3 Social Sciences
R. M. Nawi, S. A. M. Noah, L. Zakaria
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引用次数: 3

Abstract

Recommender Systems have gained immense popularity due to their capability of dealing with a massive amount of information in various domains. They are considered information filtering systems that make predictions or recommendations to users based on their interests and preferences. The more recent technology, Linked Open Data (LOD), has been introduced, and a vast amount of Resource Description Framework data have been published in freely accessible datasets. These datasets are connected to form the so-called LOD cloud. The need for semantic data representation has been identified as one of the next challenges in Recommender Systems. In a LOD-enabled recommendation framework where domain awareness plays a key role, the semantic information provided in the LOD can be exploited. However, dealing with a big chunk of the data from the LOD cloud and its integration with any domain datasets remains a challenge due to various issues, such as resource constraints and broken links. This paper presents the challenges of interconnecting and extracting the DBpedia data with the MovieLens 1 Million dataset. This study demonstrates how LOD can be a vital yet rich source of content knowledge that helps recommender systems address the issues of data sparsity and insufficient content analysis. Based on the challenges, we proposed a few alternatives and solutions to some of the challenges.
使用推荐系统数据集提取和映射关联开放数据资源的问题和挑战
推荐系统由于能够处理不同领域的大量信息而获得了极大的普及。它们被认为是信息过滤系统,可以根据用户的兴趣和偏好进行预测或推荐。最近的技术,链接开放数据(LOD),已经被引入,并且大量的资源描述框架数据已经在自由访问的数据集中发布。这些数据集连接在一起,形成了所谓的LOD云。对语义数据表示的需求已被确定为推荐系统的下一个挑战之一。在支持LOD的推荐框架中,领域感知起着关键作用,可以利用LOD中提供的语义信息。然而,处理来自LOD云的大量数据及其与任何领域数据集的集成仍然是一个挑战,因为存在各种问题,例如资源限制和断开的链接。本文提出了与MovieLens 100万数据集相互连接和提取DBpedia数据的挑战。本研究展示了LOD如何成为一个重要而丰富的内容知识来源,帮助推荐系统解决数据稀疏和内容分析不足的问题。基于这些挑战,我们针对其中的一些挑战提出了一些替代方案和解决方案。
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来源期刊
Journal of Information Science Theory and Practice
Journal of Information Science Theory and Practice Social Sciences-Library and Information Sciences
CiteScore
1.10
自引率
0.00%
发文量
0
审稿时长
12 weeks
期刊介绍: The Journal of Information Science Theory and Practice (JISTaP) is an international journal that aims at publishing original studies, review papers and brief communications on information science theory and practice. The journal provides an international forum for practical as well as theoretical research in the interdisciplinary areas of information science, such as information processing and management, knowledge organization, scholarly communication and bibliometrics. To foster scholarly communication among researchers and practitioners of library and information science around the globe, JISTaP offers a no-fee open access publishing venue where a team of dedicated editors, reviewers and staff members volunteer their services to ensure rapid dissemination and communication of scholarly works that make significant contributions. In a modern society, where information production and consumption grow at an astronomical rate, the science of information management, organization, and analysis is invaluable in effective utilization of information. The key objective of the journal is to foster research that can contribute to advancements and innovations in the theory and practice of information and library science so as to promote timely application of the findings from scientific investigations to everyday life. Recognizing the importance of the global perspective with understanding of region-specific issues, JISTaP encourages submissions of manuscripts that discuss global implications of regional findings as well as regional implications of global findings.
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