Performance analysis of evolutionary algorithm for the maximum internal spanning tree problem

X Xia, Z Huang, X Peng, Z Chen, Y Xiang - The Journal of …, 2022 - Springer
X Xia, Z Huang, X Peng, Z Chen, Y Xiang
The Journal of Supercomputing, 2022Springer
The maximum internal spanning tree (MIST) problem is to find a spanning tree with
maximum number of internal node for an undirected graph. It is a variation of the well-known
minimum spanning tree problem and is NP-hard. Evolutionary algorithms (EAs) have been
successfully applied to solve many NP-hard combinatorial optimization problems in
numerical empirical studies. However, researchers know little about their performance
guarantees from theory aspect. This paper designs a valid fitness function to guide the well …
Abstract
The maximum internal spanning tree (MIST) problem is to find a spanning tree with maximum number of internal node for an undirected graph. It is a variation of the well-known minimum spanning tree problem and is NP-hard. Evolutionary algorithms (EAs) have been successfully applied to solve many NP-hard combinatorial optimization problems in numerical empirical studies. However, researchers know little about their performance guarantees from theory aspect. This paper designs a valid fitness function to guide the well-studied evolutionary algorithm, , to optimize the MIST problem, and presents theoretical analysis to show that it can obtain a performance guarantee of 2 and 5/3 in expected runtime and , respectively. Moreover, this paper proves that the (1+1) EA can achieve a performance guarantee of 3 for a variation of the MIST problem, where each vertex is associated with a weight. In addition, comparison analyses on two family instance graphs are presented to show that is better than two local search algorithms. This theoretical study provides insight into the process of constructing a performance guarantee solution for the MIST problem.
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