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Are we there yet? Manifold identification of gradient-related proximal methods

机译:我们到了吗?渐变相关近端方法的歧管识别

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In machine learning, models that generalize better often generate outputs that lie on a low-dimensional manifold. Recently, several works have separately shown finite-time manifold identification by some proximal methods. In this work we provide a unified view by giving a simple condition under which any proximal method using a constant step size can achieve finite-iteration manifold detection. For several key methods (FISTA, DRS, ADMM, SVRG, SAGA, and RDA) we give an iteration bound, characterized in terms of their variable convergence rate and a problem-dependent constant that indicates problem degeneracy. For popular models, this constant is related to certain data assumptions, which gives intuition as to when lower active set complexity may be expected in practice.
机译:在机器学习中,概括更好地通常会产生位于低维歧管上的输出的模型。最近,几种工程通过一些近端方法分别显示了有限时间的歧管识别。在这项工作中,我们提供了一个统一的视图,通过提供一种简单的条件,在使用恒定步长的任何近端方法可以实现有限迭代歧管检测。对于几种关键方法(Fista,DRS,ADMM,SVRG,SAGA和RDA),我们提供了一种迭代绑定,其特征在于它们的可变收敛速度和问题依赖性常数,表示问题退化。对于流行的型号,这种常量与某些数据假设有关,其为在实践中可以预期较低的主动设置复杂性时提供直觉。

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