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Efficient Thompson Sampling for Online Matrix-Factorization Recommendation

机译:在线矩阵特征化推荐的有效汤普森采样

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Matrix factorization (MF) collaborative filtering is an effective and widely used method in recommendation systems. However, the problem of finding an optimal trade-off between exploration and exploitation (otherwise known as the bandit problem), a crucial problem in collaborative filtering from cold-start, has not been previously addressed. In this paper, we present a novel algorithm for online MF recommendation that automatically combines finding the most relevant items with exploring new or less-recommended items. Our approach, called Particle Thompson sampling for MF (PTS), is based on the general Thompson sampling framework, but augmented with a novel efficient online Bayesian probabilistic matrix factorization method based on the Rao-Blackwellized particle filter. Extensive experiments in collaborative filtering using several real-world datasets demonstrate that PTS significantly outperforms the current state-of-the-arts.
机译:矩阵分解(MF)协同过滤是推荐系统中一种有效且广泛使用的方法。但是,以前从未解决过在勘探与开发之间找到最佳折衷的问题(也称为土匪问题),这是从冷启动开始进行协作过滤的关键问题。在本文中,我们提出了一种新颖的在线MF推荐算法,该算法会自动将发现最相关的项目与探索新的或不那么推荐的项目相结合。我们的方法称为MF粒子汤普森抽样(PTS),基于通用的Thompson抽样框架,但又增加了一种基于Rao-Blackwellized粒子过滤器的新型高效在线贝叶斯概率矩阵分解方法。使用多个实际数据集进行的协作过滤的广泛实验表明,PTS的性能明显优于当前的最新技术。

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