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Papers/Post Processing Recommender Systems with Knowledge Graphs ...

Post Processing Recommender Systems with Knowledge Graphs for Recency, Popularity, and Diversity of Explanations

Giacomo Balloccu, Ludovico Boratto, Gianni Fenu, Mirko Marras

2022-04-24Knowledge GraphsExplainable RecommendationMusic RecommendationMovie RecommendationInformation RetrievalRe-RankingReasoning Chain ExplanationsRecommendation SystemsExplainable Models
PaperPDFCode(official)

Abstract

Existing explainable recommender systems have mainly modeled relationships between recommended and already experienced products, and shaped explanation types accordingly (e.g., movie "x" starred by actress "y" recommended to a user because that user watched other movies with "y" as an actress). However, none of these systems has investigated the extent to which properties of a single explanation (e.g., the recency of interaction with that actress) and of a group of explanations for a recommended list (e.g., the diversity of the explanation types) can influence the perceived explaination quality. In this paper, we conceptualized three novel properties that model the quality of the explanations (linking interaction recency, shared entity popularity, and explanation type diversity) and proposed re-ranking approaches able to optimize for these properties. Experiments on two public data sets showed that our approaches can increase explanation quality according to the proposed properties, fairly across demographic groups, while preserving recommendation utility. The source code and data are available at https://github.com/giacoballoccu/explanation-quality-recsys.

Results

TaskDatasetMetricValueModel
General KnowledgeMovieLens 1MNDCG0.33BPR
General KnowledgeMovieLens 1MNDCG0.33KGAT
General KnowledgeMovieLens 1MNDCG0.32FM
General KnowledgeMovieLens 1MNDCG0.27CFKG

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