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Review
. 2024 Feb 26:7:1304439.
doi: 10.3389/fdata.2024.1304439. eCollection 2024.

Knowledge-based recommender systems: overview and research directions

Affiliations
Review

Knowledge-based recommender systems: overview and research directions

Mathias Uta et al. Front Big Data. .

Abstract

Recommender systems are decision support systems that help users to identify items of relevance from a potentially large set of alternatives. In contrast to the mainstream recommendation approaches of collaborative filtering and content-based filtering, knowledge-based recommenders exploit semantic user preference knowledge, item knowledge, and recommendation knowledge, to identify user-relevant items which is of specific relevance when dealing with complex and high-involvement items. Such recommenders are primarily applied in scenarios where users specify (and revise) their preferences, and related recommendations are determined on the basis of constraints or attribute-level similarity metrics. In this article, we provide an overview of the existing state-of-the-art in knowledge-based recommender systems. Different related recommendation techniques are explained on the basis of a working example from the domain of survey software services. On the basis of our analysis, we outline different directions for future research.

Keywords: case-based recommendation; constraint solving; constraint-based recommendation; critiquing-based recommendation; knowledge-based recommender systems; model-based diagnosis; recommender systems; semantic recommender systems.

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Conflict of interest statement

MU was employed by Siemens Energy AG. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

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