Diversely Regularized Matrix Factorization for Accurate and Aggregately Diversified Recommendation

October 19, 2022 ยท Declared Dead ยท ๐Ÿ› Pacific-Asia Conference on Knowledge Discovery and Data Mining

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Authors Jongjin Kim, Hyunsik Jeon, Jaeri Lee, U Kang arXiv ID 2211.01328 Category cs.IR: Information Retrieval Cross-listed cs.LG Citations 15 Venue Pacific-Asia Conference on Knowledge Discovery and Data Mining Last Checked 3 months ago
Abstract
When recommending personalized top-$k$ items to users, how can we recommend the items diversely to them while satisfying their needs? Aggregately diversified recommender systems aim to recommend a variety of items across whole users without sacrificing the recommendation accuracy. They increase the exposure opportunities of various items, which in turn increase potential revenue of sellers as well as user satisfaction. However, it is challenging to tackle aggregate-level diversity with a matrix factorization (MF), one of the most common recommendation model, since skewed real world data lead to skewed recommendation results of MF. In this work, we propose DivMF (Diversely Regularized Matrix Factorization), a novel matrix factorization method for aggregately diversified recommendation. DivMF regularizes a score matrix of an MF model to maximize coverage and entropy of top-$k$ recommendation lists to aggregately diversify the recommendation results. We also propose an unmasking mechanism and carefully designed mi i-batch learning technique for accurate and efficient training. Extensive experiments on real-world datasets show that DivMF achieves the state-of-the-art performance in aggregately diversified recommendation.
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