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An Efficient Second-Order Approach to Factorize Sparse Matrices in Recommender Systems

机译:一种有效的二阶方法来分解推荐系统中的稀疏矩阵

摘要

Recommender systems are an important kind of learning systems, which can be achieved by latent-factor (LF)-based collaborative filtering (CF) with high efficiency and scalability. LF-based CF models rely on an optimization process with respect to some desired latent features; however, most of them employ first-order optimization algorithms, e.g., gradient decent schemes, to conduct their optimization task, thereby failing in discovering patterns reflected by higher order information. This work proposes to build a new LF-based CF model via second-order optimization to achieve higher accuracy. We first investigate a Hessian-free optimization framework, and employ its principle to avoid direct usage of the Hessian matrix by computing its product with an arbitrary vector. We then propose the Hessian-free optimization-based LF model, which is able to extract latent factors from the given incomplete matrices via a second-order optimization process. Compared with LF models based on first-order optimization algorithms, experimental results on two industrial datasets show that the proposed one can offer higher prediction accuracy with reasonable computational efficiency. Hence, it is a promising model for implementing high-performance recommenders. ? 2005-2012 IEEE.
机译:推荐系统是一种重要的学习系统,可以通过基于潜在因子(LF)的协作过滤(CF)高效且可扩展地实现。基于LF的CF模型依赖于针对某些所需潜在特征的优化过程。然而,它们中的大多数采用一阶优化算法(例如,梯度适当方案)来执行其优化任务,从而未能发现由高阶信息反映的模式。这项工作建议通过二阶优化来构建新的基于LF的CF模型,以实现更高的精度。我们首先研究了无Hessian优化框架,并采用其原理来避免通过使用任意向量计算乘积来直接使用Hessian矩阵。然后,我们提出了基于Hessian-free优化的LF模型,该模型能够通过二阶优化过程从给定的不完全矩阵中提取潜在因子。与基于一阶优化算法的低频模型相比,在两个工业数据集上的实验结果表明,所提出的一个可以提供较高的预测精度和合理的计算效率。因此,这是用于实施高性能推荐程序的有希望的模型。 ? 2005-2012 IEEE。

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