Customer Support Ticket Escalation Prediction using Feature Engineering
Lloyd Montgomery, Daniela Damian, Tyson Bulmer, Shaikh Quader

TL;DR
This paper presents a machine learning approach with feature engineering to predict support ticket escalations, significantly reducing analyst workload and outperforming non-engineered models based on a large industrial case study.
Contribution
It introduces a feature engineering process and a predictive model for support ticket escalation, validated on real-world data from IBM, improving prediction accuracy and efficiency.
Findings
Achieved 87.36% recall in escalation prediction
Reduced analyst workload by 88.23%
Engineered features outperformed non-engineered models
Abstract
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 towards 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…
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