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Crowdsourcing Task Assignment Mechanism Based on Employer Net Profit and Employee Satisfaction

机译:基于雇主净利润和员工满意度的众包任务任务机制

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Crowdsourcing task assignment has become an important task assignment model in the Internet economy era. In this paper, we study the crowdsourcing task assignment problem based on employer net profit and employee satisfaction. First, the reliability and interest of employees are modeled, based on which the mathematical expressions for employer net profit and employee satisfaction are given. Then, a multi-objective optimization problem is formulated to maximize employer net profit and employee satisfaction by jointly optimizing the task assignment matrix and task offer vector. Since the considered problem contains discrete variables, it cannot be solved directly by traditional optimization methods. Therefore, two low-complexity high-performance algorithms are proposed. The first algorithm is based on a fast non-dominated ranking genetic algorithm with an elite, which is able to explore the Pareto bound of the considered problem. The second algorithm is based on a reinforcement learning framework, which is able to maximize the weighted sum of employer net profit and employee satisfaction. Numerical results show that the number of tasks assigned to employees affects both employee satisfaction and employer net profit. The Pareto bounds and Pareto optimal solutions based on the solutions of the two proposed algorithms are also presented numerically, which quantitatively characterize the tradeoff between employer net profit and employee satisfaction.
机译:众包任务任务已成为互联网经济时代的重要任务任务模型。在本文中,我们根据雇主净利润和员工满意度研究了众群任务分配问题。首先,员工的可靠性和兴趣是根据哪些雇主净利润和员工满意度的数学表现形式的建模。然后,配制多目标优化问题,通过共同优化任务分配矩阵和任务提供向量来最大限度地提高雇主净利润和员工满意度。由于所考虑的问题包含离散变量,因此不能通过传统的优化方法直接解决。因此,提出了两个低复杂性高性能算法。第一算法基于具有精英的快速非主导排名遗传算法,该遗传算法能够探索所考虑的问题的帕累托。第二种算法基于增强学习框架,能够最大化雇主净利润和员工满意度的加权和。数值结果表明,分配给员工的任务数会影响员工满意度和雇主净利润。基于两种提出的算法的解决方案的帕累托界和帕累托最佳解决方案也在数值上呈现,这是雇主​​净利润与员工满意度之间的权衡的定量表征。

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