IEEE Trans Neural Netw Learn Syst. 2015 Apr;26(4):825-39. doi: 10.1109/TNNLS.2014.2387376. Epub 2015 Jan 15.
The L1 -norm low-rank matrix factorization (LRMF) has been attracting much attention due to its wide applications to computer vision and pattern recognition. In this paper, we construct a new hierarchical Bayesian generative model for the L1 -norm LRMF problem and design a mean-field variational method to automatically infer all the parameters involved in the model by closed-form equations. The variational Bayesian inference in the proposed method can be understood as solving a weighted LRMF problem with different weights on matrix elements based on their significance and with L2 -regularization penalties on parameters. Throughout the inference process of our method, the weights imposed on the matrix elements can be adaptively fitted so that the adverse influence of noises and outliers embedded in data can be largely suppressed, and the parameters can be appropriately regularized so that the generalization capability of the problem can be statistically guaranteed. The robustness and the efficiency of the proposed method are substantiated by a series of synthetic and real data experiments, as compared with the state-of-the-art L1 -norm LRMF methods. Especially, attributed to the intrinsic generalization capability of the Bayesian methodology, our method can always predict better on the unobserved ground truth data than existing methods.
由于 L1-范数低秩矩阵分解 (LRMF) 在计算机视觉和模式识别中的广泛应用,它引起了人们的广泛关注。在本文中,我们构建了一个新的 L1-范数 LRMF 问题的分层贝叶斯生成模型,并设计了一种均值场变分方法,通过封闭形式的方程自动推断模型中涉及的所有参数。所提出方法中的变分贝叶斯推断可以理解为基于矩阵元素的重要性,对矩阵元素上施加不同的权重,同时对参数施加 L2-正则化惩罚,来解决加权 LRMF 问题。在我们方法的推断过程中,施加到矩阵元素上的权重可以自适应地拟合,从而可以大大抑制数据中嵌入的噪声和异常值的不利影响,并可以对参数进行适当的正则化,从而从统计上保证问题的泛化能力。与最先进的 L1-范数 LRMF 方法相比,通过一系列合成和真实数据实验,验证了所提出方法的鲁棒性和效率。特别是,由于贝叶斯方法的内在泛化能力,我们的方法总是可以比现有方法更好地预测未观测的真实数据。