Explainable recommender system directed by reconstructed explanatory factors and multi‐modal matrix factorization
Teng Chang,
Zhixia Zhang,
Xingjuan Cai
Abstract:SummaryMatrix factorization (MF)‐based recommender systems (RSs) as black‐box models fail to provide explanations for the recommended items. While some models attain a degree of explainability by integrating neighborhood algorithms, which compute explainability based on the preferences of proximate users, they overlook the contribution of the subjective preferences of the target user to enhancing model explainability, resulting in suboptimal model explainability. To address this problem, an explainable RS dire… Show more
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