The prospect of combining human operators and virtual agents (bots) into an effective hybrid system that provides proper customer service to clients is promising yet challenging. The hybrid system decreases the customers' frustration when bots are unable to provide appropriate service and increases their satisfaction when they prefer to interact with human operators. Furthermore, we show that it is possible to decrease the cost and efforts of building and maintaining such virtual agents by enabling the virtual agent to incrementally learn from the human operators. We employ queuing theory to identify the key parameters that govern the behavior and efficiency of such hybrid systems and determine the main parameters that should be optimized in order to improve the service. We formally prove, and demonstrate in extensive simulations and in a user study, that with the proper choice of parameters, such hybrid systems are able to increase the number of served clients while simultaneously decreasing their expected waiting time and increasing satisfaction.
翻译:将人类操作者和虚拟代理商(机器人)合并成一个有效的混合系统,为客户提供适当的客户服务的前景充满希望,但却充满挑战。当机器人无法提供适当服务时,混合系统降低了客户的沮丧情绪,当他们愿意与人类操作商互动时,则提高了他们的满意度。此外,我们证明通过使虚拟代理商能够逐步向人类操作商学习,可以降低建设和维护这些虚拟代理商的成本和努力。我们采用了排队理论,以确定指导这些混合系统的行为和效率的关键参数,并确定为改进服务而应优化的主要参数。我们正式证明并在广泛的模拟和用户研究中证明,通过适当选择参数,这种混合系统能够增加服务客户的数量,同时减少其预期的等待时间,提高满意度。