网络连接优化:基本限制和有效算法

Chen Chen, Ruiyue Peng, Lei Ying, Hanghang Tong
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引用次数: 13

摘要

网络连通性优化旨在通过改变其底层拓扑来操纵网络连通性,是大量高影响力数据挖掘应用背后的基本任务,包括免疫、关键基础设施建设、社会协作挖掘、生物信息学分析、智能交通系统设计等。为了解决其指数级的计算复杂度,贪婪算法利用其收益递减特性被广泛用于网络连接优化。尽管在经验上取得了成功,但仍存在两个关键挑战。首先,在理论方面,除了少数特殊情况外,一般网络连通性优化问题的硬度和近似性还处于初级阶段。其次,在算法方面,目前的算法往往难以在优化质量和计算效率之间取得平衡。在本文中,我们系统地解决了网络连接优化问题的这两个挑战。首先,我们揭示了一些基本的限制,通过证明,对于广泛的网络连接优化问题,(1)它们是np困难的,(2)(1-1/e)是任何多项式算法的最优近似比。其次,我们提出了一种有效的、可扩展的、通用的算法(contains),以仔细平衡优化质量和计算效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Connectivity Optimization: Fundamental Limits and Effective Algorithms
Network connectivity optimization, which aims to manipulate network connectivity by changing its underlying topology, is a fundamental task behind a wealth of high-impact data mining applications, ranging from immunization, critical infrastructure construction, social collaboration mining, bioinformatics analysis, to intelligent transportation system design. To tackle its exponential computation complexity, greedy algorithms have been extensively used for network connectivity optimization by exploiting its diminishing returns property. Despite the empirical success, two key challenges largely remain open. First, on the theoretic side, the hardness, as well as the approximability of the general network connectivity optimization problem are still nascent except for a few special instances. Second, on the algorithmic side, current algorithms are often hard to balance between the optimization quality and the computational efficiency. In this paper, we systematically address these two challenges for the network connectivity optimization problem. First, we reveal some fundamental limits by proving that, for a wide range of network connectivity optimization problems, (1) they are NP-hard and (2) (1-1/e) is the optimal approximation ratio for any polynomial algorithms. Second, we propose an effective, scalable and general algorithm (CONTAIN) to carefully balance the optimization quality and the computational efficiency.
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