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Modelling Hybrid Human-Artificial Intelligence Cooperation: A Call Center Customer Service Case Study

机译:杂交人人工智能建模:呼叫中心客户服务案例研究

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As autonomous systems become an essential part of augmented decision-making in the workforce, we have the opportunity to change the relationship between human and machine into a more collaborative one. The future of industry, commercial and public services point in a direction where humans and artificial intelligence (AI) increasingly work together. AI systems are increasingly extending and enriching decision support by complementing and augmenting human capabilities. To further elevate this partnership, we need to form organic human-AI teams that communicate with, adapt to, and learn from each other. We create a new human-in-the-loop hybrid spectrum, that expands existing definitions of human and machine teaming. For a given situation and a team of humans and AI systems, we are interested in testing variations on human-AI cooperation outcomes. We examine a call center use case to determine how variations in human and machine teaming affects average handle time and response quality outputs that affect customer service. We have evaluated three scenarios: 1) human-only, 2) AI-only, and 3) human + AI collaboration. Under the parameter space we studied, we found that human + AI collaboration is optimal.
机译:由于自主系统成为劳动力增强决策的重要组成部分,我们有机会将人类和机器之间的关系改为更加合作的。工业,商业和公共服务的未来,在人类和人工智能(AI)越来越多地工作的方向。 AI系统越来越越来越扩展和丰富决策支持,通过补充和增强人类能力。为了进一步提升这一伙伴关系,我们需要形成与之沟通,适应和彼此学习的有机人类AI团队。我们创建了一个新的Heal-in-Loop混合谱,扩展了人类和机器组合的现有定义。对于特定情况和人类和AI系统的团队,我们有兴趣测试人类合作结果的变化。我们检查呼叫中心用例,以确定人员和机器组合的变化如何影响影响客户服务的平均手柄时间和响应质量输出。我们已经评估了三种情况:1)仅人类,2)AI和3)人类+ AI合作。在我们研究的参数空间下,我们发现人类+ AI协作是最佳的。

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