Executing, Comparing, and Reusing Linked-Data-Based Recommendation Algorithms With the Allied Framework

Author:

Figueroa Cristhian1ORCID,Vagliano Iacopo2,Rocha Oscar Rodríguez3,Torchiano Marco4,Zucker Catherine Faron5,Corrales Juan Carlos6,Morisio Maurizio4

Affiliation:

1. Universidad Antonio Nariño, Colombia

2. Leibniz Information Centre for Economics, Germany

3. Université Côte d'Azur, France

4. Politecnico di Torino, Italy

5. Université Nice Sophia Antipolis, France

6. Universidad del Cauca, Colombia

Abstract

Data published on the web following the principles of linked data has resulted in a global data space called the Web of Data. These principles led to semantically interlink and connect different resources at data level regardless their structure, authoring, location, etc. The tremendous and continuous growth of the Web of Data also implies that now it is more likely to find resources that describe real-life concepts. However, discovering and recommending relevant related resources is still an open research area. This chapter studies recommender systems that use linked data as a source containing a significant amount of available resources and their relationships useful to produce recommendations. Furthermore, it also presents a framework to deploy and execute state-of-the-art algorithms for linked data that have been re-implemented to measure and benchmark them in different application domains and without being bound to a unique dataset.

Publisher

IGI Global

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Linked data-based recommender system using hybrid semantic similarity measure;INTERNATIONAL CONFERENCE ON SCIENTIFIC RESEARCH & INNOVATION (ICSRI 2022);2023

2. A Survey on Semantic Recommendation System based on Linked Open Data(LOD);2022 Fifth College of Science International Conference of Recent Trends in Information Technology (CSCTIT);2022-11-15

3. The Current State of Linked Data-based Recommender Systems;2021 2nd Information Technology To Enhance e-learning and Other Application (IT-ELA);2021-12-28

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