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Improving e‐learning recommendation by using background knowledge

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Bibliographic Details
Journal Title: Expert Systems
Authors and Corporations: Mbipom, Blessing, Craw, Susan, Massie, Stewart
In: Expert Systems, 38, 2021, 7
Type of Resource: E-Article
Language: English
Summary: <jats:title>Abstract</jats:title><jats:p>There is currently a large amount of e‐Learning resources available to learners on the Web. However, learners often have difficulty finding and retrieving relevant materials to support their learning goals because they lack the domain knowledge to craft effective queries that convey what they wish to learn. In addition, the unfamiliar vocabulary often used by domain experts makes it difficult to map a learner's query to a relevant learning material. We address these challenges by introducing an innovative method that automatically builds background knowledge for a learning domain. In creating our method, we exploit a structured collection of teaching materials as a guide for identifying the important domain concepts. We enrich the identified concepts with discovered text from an encyclopedia, thereby increasing the richness of our acquired knowledge. We employ the developed background knowledge for influencing the representation and retrieval of learning resources to improve e‐Learning recommendation. The effectiveness of our method is evaluated using a collection of Machine Learning and Data Mining papers. Our method outperforms the benchmark, demonstrating the advantage of using background knowledge for improving the representation and recommendation of e‐Learning materials.</jats:p>
ISSN: 1468-0394
DOI: 10.1111/exsy.12265