De-singularity Subgradient for the -th-Powered -Norm Weber Location Problem
The Weber location problem is widely used in several artificial intelligence scenarios. However, the gradient of the objective does not exist at a considerable set of singular points. Recently, a de-singularity subgradient method has been proposed to fix this problem, but it can only handle the -th-powered -norm case (), which has only finite singular points. In this paper, we further establish the de-singularity subgradient for the -th-powered -norm case with and , which includes all the rest unsolved situations in this problem. This is a challenging task because the singular set is a continuum. The geometry of the objective function is also complicated so that the characterizations of the subgradients, minimum and descent direction are very difficult. We develop a -th-powered -norm Weiszfeld Algorithm without Singularity (PNWAWS) for this problem, which ensures convergence and the descent property of the objective function. Extensive experiments on six real-world data sets demonstrate that PNWAWS successfully solves the singularity problem and achieves a linear computational convergence rate in practical scenarios.
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