Modeling Customer Experience in a Contact Center through Process Log Mining

Teng Fu, Guido Zampieri, David Hodgson, C. Angione, Yifeng Zeng
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引用次数: 1

Abstract

The use of data mining and modeling methods in service industry is a promising avenue for optimizing current processes in a targeted manner, ultimately reducing costs and improving customer experience. However, the introduction of such tools in already established pipelines often must adapt to the way data is sampled and to its content. In this study, we tackle the challenge of characterizing and predicting customer experience having available only process log data with time-stamp information, without any ground truth feedback from the customers. As a case study, we consider the context of a contact center managed by TeleWare and analyze phone call logs relative to a two months span. We develop an approach to interpret the phone call process events registered in the logs and infer concrete points of improvement in the service management. Our approach is based on latent tree modeling and multi-class Naïve Bayes classification, which jointly allow us to infer a spectrum of customer experiences and test their predictability based on the current data sampling strategy. Moreover, such approach can overcome limitations in customer feedback collection and sharing across organizations, thus having wide applicability and being complementary to tools relying on more heavily constrained data.
通过流程日志挖掘建模呼叫中心的客户体验
在服务行业中使用数据挖掘和建模方法是有针对性地优化当前流程,最终降低成本和改善客户体验的有前途的途径。然而,在已经建立的管道中引入此类工具通常必须适应数据采样的方式及其内容。在本研究中,我们解决了描述和预测客户体验的挑战,只有可用的带有时间戳信息的处理日志数据,没有任何来自客户的真实反馈。作为一个案例研究,我们考虑了TeleWare管理的呼叫中心的上下文,并分析了相对于两个月的通话记录。我们开发了一种方法来解释日志中注册的电话流程事件,并推断服务管理中的具体改进点。我们的方法是基于潜在树建模和多类Naïve贝叶斯分类,它们共同允许我们推断客户体验的频谱,并基于当前的数据采样策略测试其可预测性。此外,这种方法可以克服客户反馈收集和跨组织共享方面的限制,因此具有广泛的适用性,并且是依赖于更严格约束数据的工具的补充。
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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