Average Sensitivity of Graph Algorithms

IF 1.2 3区 计算机科学 Q3 COMPUTER SCIENCE, THEORY & METHODS SIAM Journal on Computing Pub Date : 2023-08-14 DOI:10.1137/21m1399592
Nithin Varma, Yuichi Yoshida
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Abstract

Modern applications of graph algorithms often involve the use of the output sets (usually, a subset of edges or vertices of the input graph) as inputs to other algorithms. Since the input graphs of interest are large and dynamic, it is desirable for an algorithm’s output to not change drastically when a few random edges are removed from the input graph, so as to prevent issues in postprocessing. Alternately, having such a guarantee also means that one can revise the solution obtained by running the algorithm on the original graph in just a few places in order to obtain a solution for the new graph. We formalize this feature by introducing the notion of average sensitivity of graph algorithms, which is the average earth mover’s distance between the output distributions of an algorithm on a graph and its subgraph obtained by removing an edge, where the average is over the edges removed and the distance between two outputs is the Hamming distance. In this work, we initiate a systematic study of average sensitivity of graph algorithms. After deriving basic properties of average sensitivity such as composition, we provide efficient approximation algorithms with low average sensitivities for concrete graph problems, including the minimum spanning forest problem, the global minimum cut problem, the minimum - cut problem, and the maximum matching problem. In addition, we prove that the average sensitivity of our global minimum cut algorithm is almost optimal, by showing a nearly matching lower bound. We also show that every algorithm for the 2-coloring problem has average sensitivity linear in the number of vertices. One of the main ideas involved in designing our algorithms with low average sensitivity is the following fact: if the presence of a vertex or an edge in the solution output by an algorithm can be decided locally, then the algorithm has a low average sensitivity, allowing us to reuse the analyses of known sublinear-time algorithms and local computation algorithms. Using this fact in conjunction with our average sensitivity lower bound for 2-coloring, we show that every local computation algorithm for 2-coloring has query complexity linear in the number of vertices, thereby answering an open question.
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图算法的平均灵敏度
图算法的现代应用通常涉及使用输出集(通常是输入图的边或顶点的子集)作为其他算法的输入。由于感兴趣的输入图很大而且是动态的,因此当从输入图中删除一些随机边时,希望算法的输出不会发生剧烈变化,以防止后处理问题。或者,有了这样的保证,也意味着可以在几个地方修改算法在原图上运行得到的解,以获得新图的解。我们通过引入图算法的平均灵敏度的概念来形式化这一特征,即算法在图上的输出分布与通过去除一条边获得的子图之间的平均土方距离,其中平均值是在去除的边之上,两个输出之间的距离是汉明距离。在这项工作中,我们对图算法的平均灵敏度进行了系统的研究。在推导了平均灵敏度的基本性质(如组成)之后,我们为具体图问题提供了具有低平均灵敏度的有效逼近算法,包括最小生成森林问题、全局最小切割问题、最小切割问题和最大匹配问题。此外,我们还通过给出一个几乎匹配的下界,证明了我们的全局最小割算法的平均灵敏度几乎是最优的。我们还证明了2-着色问题的每个算法在顶点数量上都具有平均线性灵敏度。设计具有低平均灵敏度的算法的主要思想之一是:如果算法输出的解中存在顶点或边可以在局部确定,则该算法具有低平均灵敏度,允许我们重用已知的次线性时间算法和局部计算算法的分析。将这一事实与2-着色的平均灵敏度下界结合起来,我们证明了2-着色的每个局部计算算法的查询复杂度在顶点数量上都是线性的,从而回答了一个开放的问题。
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来源期刊
SIAM Journal on Computing
SIAM Journal on Computing 工程技术-计算机:理论方法
CiteScore
4.60
自引率
0.00%
发文量
68
审稿时长
6-12 weeks
期刊介绍: The SIAM Journal on Computing aims to provide coverage of the most significant work going on in the mathematical and formal aspects of computer science and nonnumerical computing. Submissions must be clearly written and make a significant technical contribution. Topics include but are not limited to analysis and design of algorithms, algorithmic game theory, data structures, computational complexity, computational algebra, computational aspects of combinatorics and graph theory, computational biology, computational geometry, computational robotics, the mathematical aspects of programming languages, artificial intelligence, computational learning, databases, information retrieval, cryptography, networks, distributed computing, parallel algorithms, and computer architecture.
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