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Customer support ticket escalation prediction using feature engineering

机译:使用功能工程的客户支持票证升级预测

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摘要

Understanding and keeping the customer happy is a central tenet of requirements engineering. Strategies to gather, analyze, and negotiate requirements are complemented by efforts to manage customer input after products have been deployed. For the latter, support tickets are key in allowing customers to submit their issues, bug reports, and feature requests. If insufficient attention is given to support issues, however, their escalation to management becomes time-consuming and expensive, especially for large organizations managing hundreds of customers and thousands of support tickets. Our work provides a step toward simplifying the job of support analysts and managers, particularly in predicting the risk of escalating support tickets. In a field study at our large industrial partner, IBM, we used a design science research methodology to characterize the support process and data available to IBM analysts in managing escalations. In a design science methodology, we used feature engineering to translate our understanding of support analysts’ expert knowledge of their customers into features of a support ticket model. We then implemented these features into a machine learning model to predict support ticket escalations. We trained and evaluated our machine learning model on over 2.5 million support tickets and 10,000 escalations, obtaining a recall of 87.36% and an 88.23% reduction in the workload for support analysts looking to identify support tickets at risk of escalation. Further on-site evaluations, through a prototype tool we developed to implement our machine learning techniques in practice, showed more efficient weekly support ticket management meetings. Finally, in addition to these research evaluation activities, we compared the performance of our support ticket model with that of a model developed with no feature engineering; the support ticket model features outperformed the non-engineered model. The artifacts created in this research are designed to serve as a starting place for organizations interested in predicting support ticket escalations, and for future researchers to build on to advance research in escalation prediction.
机译:理解并使客户满意是需求工程的中心原则。部署产品后,需要通过管理客户输入来补充收集,分析和协商需求的策略。对于后者,支持票证是允许客户提交问题,错误报告和功能要求的关键。但是,如果对支持问题的关注不足,则将其升级到管理变得既耗时又昂贵,特别是对于管理数百个客户和数千张支持通知单的大型组织而言。我们的工作为简化支持分析师和经理的工作提供了一步,尤其是在预测支持票升级的风险方面。在我们的大型工业合作伙伴IBM的现场研究中,我们使用了设计科学研究方法论来表征支持IBM分析师在管理升级中使用的支持流程和数据。在设计科学方法论中,我们使用功能工程将对支持分析师对客户的专业知识的理解转化为支持票证模型的功能。然后,我们将这些功能实现到机器学习模型中,以预测支持通知单的升级。我们对超过250万张支持票和10,000份升级的机器学习模型进行了培训和评估,为希望确定有升级风险的支持票的支持分析人员召回了87.36%的工作量,减少了88.23%的工作量。通过开发用于在实践中实施机器学习技术的原型工具进行的进一步现场评估显示,每周支持票务管理会议的效率更高。最后,除了这些研究评估活动之外,我们还将支持票证模型的性能与没有特征工程开发的模型的性能进行了比较。支持票证模型的功能优于非工程模型。这项研究中创建的工件旨在为有兴趣预测支持票升级的组织提供一个起点,并为将来的研究人员继续进行升级预测提供基础。

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