Nirmala Bhatt, B. Gorain, Kaushik Mondal, S. Pandit
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引用次数: 0
摘要
最大独立集问题在图论和相关领域得到了广泛研究。图的独立集是图中不相邻顶点的子集。最大独立集是规模最大的独立集。本文研究的是分布式环境下某些类别几何交集图中的最大独立集问题。更确切地说,我们研究了两种几何交集图(区间图和轴平行线段交集图)上的最大独立集问题,并提出了确定性分布式算法,其模型与本地通信模型相似,但稍弱于本地通信模型。我们用[公式:见正文]轮和[公式:见正文]消息计算区间图上的最大独立集,其中[公式:见正文]是最大独立集的大小,[公式:见正文]是图中的节点数。我们提供了[公式:见正文]的回合数匹配下限,而[公式:见正文]则是信息复杂度的微不足道的下限。因此,我们的算法在时间和信息上都是最优的。我们还研究了区间数图[公式:见正文]中的最大独立集问题,这是区间图的一种特例,其中的区间长度完全[公式:见正文]不同。我们提出了一种[公式:见正文]轮运行的[公式:见正文]近似算法。对于轴平行线段相交图,我们设计了一种[公式:见正文]近似计算算法,它可以在[公式:见正文]轮中得到解。本文的结果扩展了 Molla 等人 [J. Parallel Distrib.]
Distributed Independent Sets in Interval and Segment Intersection Graphs
The Maximum Independent Set problem is well-studied in graph theory and related areas. An independent set of a graph is a subset of non-adjacent vertices of the graph. A maximum independent set is an independent set of maximum size. This paper studies the Maximum Independent Set problem in some classes of geometric intersection graphs in a distributed setting. More precisely, we study the Maximum Independent Set problem on two geometric intersection graphs, interval and axis-parallel segment intersection graphs, and present deterministic distributed algorithms in a model that is similar but a little weaker than the local communication model. We compute the maximum independent set on interval graphs in [Formula: see text] rounds and [Formula: see text] messages, where [Formula: see text] is the size of the maximum independent set and [Formula: see text] is the number of nodes in the graph. We provide a matching lower bound of [Formula: see text] on the number of rounds, whereas [Formula: see text] is a trivial lower bound on message complexity. Thus, our algorithm is both time and message-optimal. We also study the Maximum Independent Set problem in interval count [Formula: see text] graphs, a special case of the interval graphs where the intervals have exactly [Formula: see text] different lengths. We propose an [Formula: see text]-approximation algorithm that runs in [Formula: see text] round. For axis-parallel segment intersection graphs, we design an [Formula: see text]-approximation algorithm that obtains a solution in [Formula: see text] rounds. The results in this paper extend the results of Molla et al. [J. Parallel Distrib. Comput. 2019].
期刊介绍:
The International Journal of Foundations of Computer Science is a bimonthly journal that publishes articles which contribute new theoretical results in all areas of the foundations of computer science. The theoretical and mathematical aspects covered include:
- Algebraic theory of computing and formal systems
- Algorithm and system implementation issues
- Approximation, probabilistic, and randomized algorithms
- Automata and formal languages
- Automated deduction
- Combinatorics and graph theory
- Complexity theory
- Computational biology and bioinformatics
- Cryptography
- Database theory
- Data structures
- Design and analysis of algorithms
- DNA computing
- Foundations of computer security
- Foundations of high-performance computing