TL;DR
This paper introduces an ontology-based recommender system that leverages literary themes to improve recommendations for fiction content, especially in cold-start scenarios, demonstrated through a Star Trek episode case study.
Contribution
It presents a novel ontology-based similarity measure integrated with Item-KNN, addressing limitations of collaborative filtering in cold-start and homogeneous item collections.
Findings
The proposed method outperforms other approaches in cold-start scenarios.
Ontology-based similarity provides effective recommendations for similar items.
The system offers a flexible framework for extending literary theme ontologies.
Abstract
Collaborative filtering based recommender systems have proven to be extremely successful in settings where user preference data on items is abundant. However, collaborative filtering algorithms are hindered by their weakness against the item cold-start problem and general lack of interpretability. Ontology-based recommender systems exploit hierarchical organizations of users and items to enhance browsing, recommendation, and profile construction. While ontology-based approaches address the shortcomings of their collaborative filtering counterparts, ontological organizations of items can be difficult to obtain for items that mostly belong to the same category (e.g., television series episodes). In this paper, we present an ontology-based recommender system that integrates the knowledge represented in a large ontology of literary themes to produce fiction content recommendations. The main…
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