In real-world applications, many optimization problems have the time-linkage property, that is, the objective function value relies on the current solution as well as the historical solutions. Although the rigorous theoretical analysis on evolutionary algorithms has rapidly developed in recent two decades, it remains an open problem to theoretically understand the behaviors of evolutionary algorithms on time-linkage problems. This paper takes the first step to rigorously analyze evolutionary algorithms for time-linkage functions. Based on the basic OneMax function, we propose a time-linkage function where the first bit value of the last time step is integrated but has a different preference from the current first bit. We prove that with probability $1-o(1)$, randomized local search and $(1+1)$ EA cannot find the optimum, and with probability $1-o(1)$, $(\mu+1)$ EA is able to reach the optimum.
翻译:在现实世界应用程序中,许多优化问题都有时间关联属性,即客观函数值依赖于当前解决方案和历史解决方案。虽然对进化算法的严格理论分析近二十年来迅速发展,但对于理论上理解时间链接问题进化算法的行为来说,它仍然是一个开放的问题。本文件迈出了第一步,严格分析时间链接函数的进化算法。根据基本的 OneMax 函数,我们提议了一个时间链接函数,将最后一步的第一个点值整合在一起,但与当前第一点有不同偏好。我们证明,如果概率为1o(1)美元、随机本地搜索和1+1美元的EA美元,则无法找到最佳方法,而概率为1o(1)美元、1美元(mu+1美元)的EA美元则能够达到最佳方法。