Running-time Analysis of () Evolutionary Combinatorial Optimization Based on Multiple-gain Estimation

The running-time analysis of evolutionary combinatorial optimization is a fundamental topic in evolutionary computation. However, theoretical results regarding the evolutionary algorithm (EA) for combinatorial optimization problems remain relatively scarce compared to those for simple pseudo-Boolean problems. This paper proposes a multiple-gain model to analyze the running time of EAs for combinatorial optimization problems. The proposed model is an improved version of the average gain model, which is a fitness-difference drift approach under the sigma-algebra condition to estimate the running time of evolutionary numerical optimization. The improvement yields a framework for estimating the expected first hitting time of a stochastic process in both average-case and worst-case scenarios. It also introduces novel running-time results of evolutionary combinatorial optimization, including two tighter time complexity upper bounds than the known results in the case of () EA for the knapsack problem with favorably correlated weights, a closed-form expression of time complexity upper bound in the case of () EA for general -MAX-SAT problems and a tighter time complexity upper bounds than the known results in the case of () EA for the traveling salesperson problem. Experimental results indicate that the practical running time aligns with the theoretical results, verifying that the multiple-gain model is an effective tool for running-time analysis of () EA for combinatorial optimization problems.
View on arXiv@article{huang2025_2507.02381, title={ Running-time Analysis of ($μ+λ$) Evolutionary Combinatorial Optimization Based on Multiple-gain Estimation }, author={ Min Huang and Pengxiang Chen and Han Huang and Tongli He and Yushan Zhang and Zhifeng Hao }, journal={arXiv preprint arXiv:2507.02381}, year={ 2025 } }