Assigning Agents to Increase Network-Based Neighborhood Diversity

Zirou Qiu, A. Yuan, Chen Chen, M. Marathe, Sujith Ravi, D. Rosenkrantz, R. Stearns, A. Vullikanti
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引用次数: 2

Abstract

Motivated by real-world applications such as the allocation of public housing, we examine the problem of assigning a group of agents to vertices (e.g., spatial locations) of a network so that the diversity level is maximized. Specifically, agents are of two types (characterized by features), and we measure diversity by the number of agents who have at least one neighbor of a different type. This problem is known to be NP-hard, and we focus on developing approximation algorithms with provable performance guarantees. We first present a local-improvement algorithm for general graphs that provides an approximation factor of 1/2. For the special case where the sizes of agent subgroups are similar, we present a randomized approach based on semidefinite programming that yields an approximation factor better than 1/2. Further, we show that the problem can be solved efficiently when the underlying graph is treewidth-bounded and obtain a polynomial time approximation scheme (PTAS) for the problem on planar graphs. Lastly, we conduct experiments to evaluate the per-performance of the proposed algorithms on synthetic and real-world networks.
分配代理以增加基于网络的邻居多样性
受诸如公共住房分配等现实世界应用的激励,我们研究了将一组代理分配到网络的顶点(例如空间位置)以使多样性水平最大化的问题。具体来说,代理有两种类型(以特征为特征),我们通过至少有一个不同类型邻居的代理数量来衡量多样性。这个问题被认为是np困难的,我们专注于开发具有可证明性能保证的近似算法。我们首先提出了一般图的局部改进算法,该算法提供了1/2的近似因子。对于代理子组大小相似的特殊情况,我们提出了一种基于半确定规划的随机方法,该方法产生的近似因子优于1/2。进一步,我们证明了当底层图是树宽有界时,可以有效地解决问题,并获得了平面图上问题的多项式时间逼近格式(PTAS)。最后,我们进行了实验来评估所提出算法在合成网络和现实世界网络上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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