The most important goal of customer services is to keep the customer satisfied. However, service resources are always limited and must be prioritized. Therefore, it is important to identify customers who potentially become unsatisfied and might lead to escalations. Today this prioritization of customers is often done manually. Data science on IoT data (esp. log data) for machine health monitoring, as well as analytics on enterprise data for customer relationship management (CRM) have mainly been researched and applied independently. In this paper, we present a framework for a data-driven decision support system which combines IoT and enterprise data to model customer sentiment. Such decision support systems can help to prioritize customers and service resources to effectively troubleshoot problems or even avoid them. The framework is applied in a real-world case study with a major medical device manufacturer. This includes a fully automated and interpretable machine learning pipeline designed to meet the requirements defined with domain experts and end users. The overall framework is currently deployed, learns and evaluates predictive models from terabytes of IoT and enterprise data to actively monitor the customer sentiment for a fleet of thousands of high-end medical devices. Furthermore, we provide an anonymized industrial benchmark dataset for the research community.
翻译:客户服务的最重要目标是使客户满意,然而,服务资源总是有限,必须优先处理,因此,必须查明可能不满意并可能导致升级的客户。今天,客户的优先排序往往是手工完成的。关于机器健康监测所需的IOT数据的数据科学(esp.log数据),以及关于客户关系管理的企业数据分析,主要是独立研究和应用的。本文介绍了一个数据驱动决策支持系统的框架,该系统将IOT和企业数据结合起来,以模拟客户情绪。这种决策支持系统有助于优先考虑客户和服务资源,以有效解决问题,甚至避免问题。这个框架用于与一个主要医疗设备制造商进行真实世界案例研究,其中包括一个完全自动化和可解释的机器学习管道,以满足与域专家和终端用户界定的要求。目前,我们使用、学习和评价了IOT的百万字节和企业数据的预测模型,以积极监测数千个高端医学设备群群群的客户情绪。此外,我们提供一套数据,以便积极监测用于高端实验室研究的系统。