AI Coach Assist: An Automated Approach for Call Recommendation in Contact Centers for Agent Coaching

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Abstract

In recent years, the utilization of Artifcial Intelligence (AI) in the contact center industry is on the rise. One area where AI can have a signif-cant impact is in the coaching of contact center agents. By analyzing call transcripts using Natural Language Processing (NLP) techniques, it would be possible to quickly determine which calls are most relevant for coaching purposes. In this paper, we present "AI Coach Assist", which leverages the pre-trained transformer-based language models to determine whether a given call is coachable or not based on the quality assurance (QA) questions asked by the contact center managers or supervisors. The system was trained and evaluated on a large dataset collected from real-world contact centers and provides an effective way to recommend calls to the contact center managers that are more likely to contain coachable moments. Our experimental fndings demonstrate the potential of AI Coach Assist to improve the coaching process, resulting in enhancing the performance of contact center agents.

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APA

Laskar, M. T. R., Chen, C., Fu, X. Y., Azizi, M., Shashi Bhushan, T. N., & Corston-Oliver, S. (2023). AI Coach Assist: An Automated Approach for Call Recommendation in Contact Centers for Agent Coaching. In Proceedings of the Annual Meeting of the Association for Computational Linguistics (Vol. 5, pp. 599–607). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2023.acl-industry.57

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