Fast discrete factorization machine for personalized item recommendation
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摘要
Personalized item recommendation has become an essential target of Web applications, but it suffers from the efficiency problem due to a large volume of data. In particular, feature-based factorization machine models are generally limited by the vast number of feature dimensions, leading to catastrophic computation time. In this paper, we propose a Fast Discrete Factorization Machine (FDFM) method to resolve these issues by applying the hash coding technologies to factorization machine models. Specifically, it discretizes the real-valued feature vectors in the parameter model during the process of learning personalized item rankings, whereby the overall computational time can be greatly reduced. Besides, we propose convergence update rules to optimize the quantization loss of the binarization problem, which can be used in personalized ranking scenarios efficiently. Based on the evaluation in two real-world datasets, our proposed approach consistently shows better performance than other baselines, especially when using shorter binary codes.
论文关键词:Discretization,Factorization machine,Item recommendation
论文评审过程:Received 9 April 2019, Revised 29 December 2019, Accepted 31 December 2019, Available online 7 January 2020, Version of Record 7 March 2020.
论文官网地址:https://doi.org/10.1016/j.knosys.2019.105470