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Local Convergence of the Heavy-Ball Method and iPiano for Non-convex Optimization

机译:局部收敛性重球方法和IPIANO用于非凸优化

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摘要

A local convergence result for an abstract descent method is proved. The sequence of iterates is attracted by a local (or global) minimum, stays in its neighborhood, and converges within this neighborhood. This result allows algorithms to exploit local properties of the objective function. In particular, the abstract theory in this paper applies to the inertial forward-backward splitting method: iPiano-a generalization of the Heavy-ball method. Moreover, it reveals an equivalence between iPiano and inertial averaged/alternating proximal minimization and projection methods. Key for this equivalence is the attraction to a local minimum within a neighborhood and the fact that, for a prox-regular function, the gradient of the Moreau envelope is locally Lipschitz continuous and expressible in terms of the proximal mapping. In a numerical feasibility problem, the inertial alternating projection method significantly outperforms its non-inertial variants.
机译:证明了抽象血液方法的局部收敛结果。 迭代序列被当地(或全球)最少吸引,在其邻域中保持,并在这个邻居内收敛。 此结果允许算法利用目标函数的本地属性。 特别是,本文的抽象理论适用于惯性前后分裂方法:IPIANO-A的重型方法的概括。 此外,它揭示了IPIANO和惯性平均/交替近端最小化和投影方法之间的等价性。 此等价的钥匙是邻居内部最小值的景点,事实上,对于Prox-常规功能,MOREAU信封的梯度是局部Lipschitz在近端映射方面连续且表示。 在数值可行性问题中,惯性交替投影方法显着优于其非惯性变体。

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