客户支持系统中数据驱动信道分配和联络路由的仿真评估

Rodrigo Caporali De Andrade;Paul T. Grogan;Somayeh Moazeni
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引用次数: 0

摘要

数据驱动的运营管理方法可以改变公司运营,快速响应客户需求,并实现新的商业模式。然而,公司面临着衡量和评估新技术将如何影响运营流程的挑战。本文采用系统工程的方法来评估在多渠道客户支持系统中采用数据驱动机制来改进操作流程的权衡。在本文中,我们研究了两种技术应用的潜在成本节约:将客户引导到高效的自助服务通信渠道的分类方法,以及根据查询类型和可用技能集将客户与代理匹配的路由方法。离散事件模拟评估采用新技术对系统级性能的影响。假设场景结合了客户分类机制和可用通信渠道的不同配置,以评估满足目标服务质量水平所需的代理总数的减少情况。讨论包括运营经理在采用数据驱动技术时如何利用实验信息做出战略运营决策的实际例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulation Assessment of Data-Driven Channel Allocation and Contact Routing in Customer Support Systems
Data-driven operations management methods can transform company operations, respond rapidly to customer demands, and enable new business models. However, companies face the challenge of measuring and evaluating how new technology will impact operational processes. This article takes a systems engineering approach to assess the tradeoffs of adopting data-driven mechanisms to improve operational processes in a multichannel customer support system. In this article, we investigate potential cost savings from two technology applications: classification methods to direct customers to efficient self-service communication channels and routing methods to match customers with agents based on the query type and available skill set. Discrete event simulation evaluates how new technology adoption affects system-level performance. What-if scenarios combine distinct configurations of customer classification mechanisms and available communication channels to evaluate the reduction in the total number of agents required to meet a target service quality level. Discussion includes practical examples of how operational managers could use experimental information to make strategic operational decisions when adopting data-driven technologies.
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