Real-time Caller Intent Detection In Human-Human Customer Support Spoken Conversations
Mrinal Rawat, Victor Barres

TL;DR
This paper presents a real-time intent detection system for human-human customer support calls, using a dual LSTM architecture to predict intent boundaries and classes with minimal latency.
Contribution
It adapts voice-assistant incremental prediction methods to human-human conversations, enabling timely intent detection during live interactions.
Findings
Achieved accurate real-time intent detection with low latency.
Analyzed architecture trade-offs between accuracy and prediction speed.
Validated on a private telecom customer support dataset.
Abstract
Agent assistance during human-human customer support spoken interactions requires triggering workflows based on the caller's intent (reason for call). Timeliness of prediction is essential for a good user experience. The goal is for a system to detect the caller's intent at the time the agent would have been able to detect it (Intent Boundary). Some approaches focus on predicting the output offline, i.e. once the full spoken input (e.g. the whole conversational turn) has been processed by the ASR system. This introduces an undesirable latency in the prediction each time the intent could have been detected earlier in the turn. Recent work on voice assistants has used incremental real-time predictions at a word-by-word level to detect intent before the end of a command. Human-directed and machine-directed speech however have very different characteristics. In this work, we propose to…
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Taxonomy
TopicsAI in Service Interactions · Speech and dialogue systems · Personal Information Management and User Behavior
MethodsIs Venmo Customer Support Available 24/7? How to Reach a Real Person
