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Online Nonnegative Matrix Factorization With Outliers

机译:具有异常值的在线非负矩阵分解

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摘要

We propose a unified and systematic framework for performing online nonnegative matrix factorization in the presence of outliers. Our framework is particularly suited to large-scale data. We propose two solvers based on projected gradient descent and the alternating direction method of multipliers. We prove that the sequence of objective values converges almost surely by appealing to the quasi-martingale convergence theorem. We also show the sequence of learned dictionaries converges to the set of stationary points of the expected loss function almost surely. In addition, we extend our basic problem formulation to various settings with different constraints and regularizers. We also adapt the solvers and analyses to each setting. We perform extensive experiments on both synthetic and real datasets. These experiments demonstrate the computational efficiency and efficacy of our algorithms on tasks such as (parts-based) basis learning, image denoising, shadow removal, and foreground–background separation.
机译:我们提出了一个统一的系统框架,用于在存在异常值的情况下执行在线非负矩阵分解。我们的框架特别适合大规模数据。我们提出了两个基于投影梯度下降和乘法器交替方向法的求解器。通过证明准the合定理,我们证明了目标值序列几乎可以收敛。我们还显示了学习字典的序列几乎可以肯定地收敛到期望损失函数的平稳点集。此外,我们将基本问题的提法扩展到具有不同约束和规则化器的各种设置。我们还针对每个设置调整求解器并进行分析。我们对合成数据集和真实数据集都进行了广泛的实验。这些实验证明了我们的算法在诸如(基于零件的)基础学习,图像去噪,阴影去除以及前景与背景分离等任务上的计算效率和功效。

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