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"Stupid robot, I want to speak to a human!" User Frustration Detection in Task-Oriented Dialog Systems

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arxiv 2411.17437 v2 pith:WVSGXJDO submitted 2024-11-26 cs.CL

"Stupid robot, I want to speak to a human!" User Frustration Detection in Task-Oriented Dialog Systems

classification cs.CL
keywords detectionuserfrustrationdialogmethodsanalysisapproachdeployed
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Detecting user frustration in modern-day task-oriented dialog (TOD) systems is imperative for maintaining overall user satisfaction, engagement, and retention. However, most recent research is focused on sentiment and emotion detection in academic settings, thus failing to fully encapsulate implications of real-world user data. To mitigate this gap, in this work, we focus on user frustration in a deployed TOD system, assessing the feasibility of out-of-the-box solutions for user frustration detection. Specifically, we compare the performance of our deployed keyword-based approach, open-source approaches to sentiment analysis, dialog breakdown detection methods, and emerging in-context learning LLM-based detection. Our analysis highlights the limitations of open-source methods for real-world frustration detection, while demonstrating the superior performance of the LLM-based approach, achieving a 16\% relative improvement in F1 score on an internal benchmark. Finally, we analyze advantages and limitations of our methods and provide an insight into user frustration detection task for industry practitioners.

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