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RecSys Issues Ontology: A Knowledge Classification of Issues for Recommender Systems Researchers

机译:RECSYS问题本体:推荐系统研究人员的知识分类

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Scholarly research has extensively examined a number of issues and challenges affecting recommender systems (e.g. 'cold-start', 'scrutability', 'trust', 'context', etc.). However, a comprehensive knowledge classification of the issues involved with recommender systems research has yet to be developed. A holistic knowledge representation of the issues affecting a domain is critical for research advancement. The aim of this study is to advance scholarly research within the domain of recommender systems through formal knowledge classification of issues and their relationships to one another within recommender systems research literature. In this study, we employ a rigorous ontology engineering process for development of a recommender system issues ontology. This ontology provides a formal specification of the issues affecting recommender systems research and development. The ontology answers such questions as, "What issues are associated with 'trust' in recommender systems research?", "What are issues associated with improving and evaluating the 'performance' of a recommender system?" or "What 'contextual' factors might a recommender systems developer wish to consider in order to improve the relevancy and usefulness of recommendations? " Additionally, as an intermediate representation step in the ontology acquisition process, a concept map of recommender systems issues has been developed to provide conceptual visualization of the issues so that researchers may discern broad themes as well as relationships between concepts. These knowledge representations may aid future researchers wishing to take an integrated approach to addressing the challenges and limitations associated with current recommender systems research.
机译:学术研究已经广泛地检查了一些影响推荐系统的问题和挑战(例如,“冷启动”,“残酷”,“信任”,“上下文”等)。但是,尚未开发出综合知识分类涉及推荐系统研究的问题。影响域名的问题的整体知识表示对于研究进步至关重要。本研究的目的是通过正式的知识分类及其关系在推荐系统研究文献中,通过正式的知识分类,通过正式的知识分类,推荐学术研究。在这项研究中,我们采用了一个严格的本体工程过程,用于开发推荐系统问题本体论。该本体论提供了影响推荐系统研发的问题的正式规范。本体论回答了此类问题,“在推荐系统研究中与”信任“相关的问题?”,“,与改进和评估推荐系统的”性能“有关的问题是什么?”或者“内容”的因素可能是推荐的系统开发人员希望考虑以改善建议的相关性和有用性?“另外,作为本体获取过程中的中间代表性,已经开发了推荐系统问题的概念图提供问题的概念可视化,以便研究人员可以辨别广泛的主题以及概念之间的关系。这些知识表示可以帮助未来的研究人员希望采取综合方法来解决与当前推荐系统研究相关的挑战和限制。

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