Evolutionary learning of virtual team member preferences

P. Pendharkar
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引用次数: 1

Abstract

Virtual team members do not have a complete understanding of other team member (agent) preferences, which makes team coordination somewhat difficult. Traditional approaches for team coordination require a lot of inter-agent electronic communication and often result in wasted effort. Methods that reduce inter-agent communication and conflicts are likely to increase productivity of virtual teams. In this research, we propose an evolutionary genetic algorithm based intelligent agent that will learn team member preferences from past actions and develop an agent-coordination schedule by minimizing schedule conflicts between different members serving on a virtual team. Since the intelligent agent learns individual team member preferences, the potential for conflict is greatly reduced, which in turn results in lower inter-agent communication cost and increased team productivity.
虚拟团队成员偏好的进化学习
虚拟团队成员并不完全了解其他团队成员(代理)的偏好,这使得团队协调有些困难。传统的团队协调方法需要大量的代理之间的电子通信,并且经常导致浪费精力。减少代理间沟通和冲突的方法可能会提高虚拟团队的生产力。在本研究中,我们提出了一种基于进化遗传算法的智能代理,该智能代理将从过去的行为中学习团队成员的偏好,并通过最小化不同团队成员之间的时间表冲突来制定代理协调时间表。由于智能代理学习了团队成员的个人偏好,因此大大减少了冲突的可能性,从而降低了代理间的通信成本,提高了团队生产力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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