对称辉煌:通过密度友好分解揭示普遍最接近精炼和费雪市场均衡

T-H. Hubert Chan, Quan Xue
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引用次数: 0

摘要

我们提出了一个综合框架,在顶点加权二叉图的背景下统一了多个研究领域,提供了更深入的见解和更好的解决方案。每个问题的基本求解概念都涉及细化,即把一边的顶点权重分配给附带的边。主要目标是找出具有特定最优条件的细化对,并能在本地验证。这个框架将传统上研究的现有问题和新问题联系起来。我们探讨了三个主要问题:(1) 密度友好超图分解;(2) 普遍最接近分布细化问题;(3) 对称费雪市场均衡。我们的框架提出了密度友好超图分解的对称观点,其中超门和节点扮演对称角色。这种对称分解可作为一种工具,用于推导其他问题最优解的精确特征,并使算法从一个问题应用到另一个问题。
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Symmetric Splendor: Unraveling Universally Closest Refinements and Fisher Market Equilibrium through Density-Friendly Decomposition
We present a comprehensive framework that unifies several research areas within the context of vertex-weighted bipartite graphs, providing deeper insights and improved solutions. The fundamental solution concept for each problem involves refinement, where vertex weights on one side are distributed among incident edges. The primary objective is to identify a refinement pair with specific optimality conditions that can be verified locally. This framework connects existing and new problems that are traditionally studied in different contexts. We explore three main problems: (1) density-friendly hypergraph decomposition, (2) universally closest distribution refinements problem, and (3) symmetric Fisher Market equilibrium. Our framework presents a symmetric view of density-friendly hypergraph decomposition, wherein hyperedges and nodes play symmetric roles. This symmetric decomposition serves as a tool for deriving precise characterizations of optimal solutions for other problems and enables the application of algorithms from one problem to another.
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