Research on dynamic allocation of human resources based on Improved Ant Colony Optimization

Yue Cui
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Abstract

In order to solve the problems of poor balance and low efficiency of traditional dynamic allocation method of human resources, this paper proposes a new dynamic allocation method of human resources based on improved ant colony optimization. In order to improve the convergence of the traditional ant colony optimization algorithm and avoid falling into the local optimal solution, the ant colony optimization algorithm is improved from three aspects: heuristic function, state selection strategy and pheromone allocation mechanism. Based on the improved ant colony optimization algorithm, the objective function of human resource dynamic allocation is constructed on the basis of human resource workload, work efficiency and work ability index, so as to obtain the optimal allocation results and complete the dynamic allocation of human resources. The experimental results show that, compared with the traditional human resource allocation method, the distribution equilibrium and efficiency of the proposed method are higher, and the distribution equilibrium is basically consistent with the standard value, indicating that the practical application performance of the proposed method is stronger.
基于改进蚁群优化的人力资源动态配置研究
针对传统人力资源动态配置方法存在的平衡性差、效率低等问题,提出了一种基于改进蚁群优化的人力资源动态配置新方法。为了提高传统蚁群优化算法的收敛性,避免陷入局部最优解,从启发式函数、状态选择策略和信息素分配机制三个方面对蚁群优化算法进行了改进。基于改进的蚁群优化算法,以人力资源工作量、工作效率和工作能力指标为基础,构建人力资源动态配置的目标函数,从而获得最优配置结果,完成人力资源的动态配置。实验结果表明,与传统人力资源配置方法相比,所提方法的分配均衡性和效率更高,且分配均衡性与标准值基本一致,表明所提方法的实际应用性能更强。
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