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On the Location of the Minimizer of the Sum of Two Strongly Convex Functions

机译:关于两个强凸函数和的极小值的位置

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The problem of finding the minimizer of a sum of convex functions is central to the field of distributed optimization. Thus, it is of interest to understand how that minimizer is related to the properties of the individual functions in the sum. In this paper, we provide an upper bound on the region containing the minimizer of the sum of two strongly convex functions. We consider two scenarios with different constraints on the upper bound of the gradients of the functions. In the first scenario, the gradient constraint is imposed on the location of the potential minimizer, while in the second scenario, the gradient constraint is imposed on a given convex set in which the minimizers of two original functions are embedded. We characterize the boundaries of the regions containing the minimizer in both scenarios.
机译:寻找凸函数之和的最小化器的问题是分布式优化领域的核心。因此,有兴趣了解最小化器与总和中各个函数的属性之间的关系。在本文中,我们提供了包含两个强凸函数之和的极小值的区域的上限。我们考虑在函数梯度的上限上具有不同约束的两种情况。在第一种情况下,将梯度约束施加于潜在极小值的位置,而在第二种情况下,将梯度约束施加于给定凸集,其中嵌入了两个原始函数的极小值。在这两种情况下,我们都对包含最小化器的区域的边界进行了表征。

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