推荐系统中增强矩阵分解的学习因子选择

N. Chowdhury, Xiongcai Cai, Cheng Luo
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引用次数: 0

摘要

矩阵分解(MF)是一种有效的推荐算法,它根据其他志同道合的用户的历史偏好来预测用户对物品的偏好。经典MF方法没有明确区分决定用户对某一物品偏好的潜在因素的重要性。在学习过程中,潜在因素的相同贡献导致对不重要变量的不必要更新,从而导致较慢和次优收敛。在本文中,我们提出了一种新的矩阵分解方法,它不仅寻求决定用户偏好的内在和突出因素,而且系统地强化了这些因素产生的贡献。在助推的基础上,建立了考虑潜在因素重要性变化的因素选择机制,利用模型不确定性减少的原理,在潜在因素所选择的子空间上生成集成推荐器。在三个公开可用的基准数据集上,对推荐系统的各种最新方法进行了评估。实验结果证实了该方法的有效性和高效性。
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Learning Factor Selection for Boosted Matrix Factorisation in Recommender Systems
Matrix factorisation (MF), an effective recommendation algorithm, predicts user preferences on items based on the historical preferences of other like-minded users. Classical MF methods do not explicitly distinguish the significances across the underlying factors that determine a users' preference on an item. The identical contribution of latent factors during learning results unnecessary updates on unimportant variables that leads to slower and suboptimal convergence. In this paper, we propose a new matrix factorisation method that not only seeks the intrinsic and outstanding factors that determine the users' preferences but also systematically reinforces the contribution generated by these factors. Based on boosting, a factor selection mechanism is developed to account the variable importance of latent factors to generate an ensemble recommender on the selected subspace of the latent factors by the principle of model uncertainty reduction. The proposed method is evaluated against a variety of the state-of-the-art methods of recommender systems on three publicly available benchmark datasets. The results confirm the effectiveness and efficiency of the proposed method.
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