Qualitative Analysis and Adaptive Boosted DCA for Generalized Multi-Source Weber Problems
This paper has two primary objectives. First, we investigate fundamental qualitative properties of the generalized multi-source Weber problem formulated using the Minkowski gauge function. This includes proving the existence of global optimal solutions, demonstrating the compactness of the solution...
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Zusammenfassung: | This paper has two primary objectives. First, we investigate fundamental
qualitative properties of the generalized multi-source Weber problem formulated
using the Minkowski gauge function. This includes proving the existence of
global optimal solutions, demonstrating the compactness of the solution set,
and establishing optimality conditions for these solutions. Second, we apply
Nesterov's smoothing and the adaptive Boosted Difference of Convex functions
Algorithm (BDCA) to solve both the unconstrained and constrained versions of
the generalized multi-source Weber problems. These algorithms build upon the
work presented in [6,19]. We conduct a comprehensive evaluation of the adaptive
BDCA, comparing its performance to the method proposed in [19], and provide
insights into its efficiency. |
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DOI: | 10.48550/arxiv.2409.13635 |