Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing: Industry Track 2022
DOI: 10.18653/v1/2022.emnlp-industry.37
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Improving Large-Scale Conversational Assistants using Model Interpretation based Training Sample Selection

Abstract: Natural language understanding (NLU) models are a core component of large-scale conversational assistants. Collecting training data for these models through manual annotations is slow and expensive that impedes the pace of model improvement. We present a three stage approach to address this challenge: First, we identify a large set of relatively infrequent utterances from live traffic where the users implicitly communicated satisfaction with a response (such as by not interrupting), along with the existing mod… Show more

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“…Schroedl et al's (Schroedl et al, 2022) scientific endeavors shine a spotlight on the unlimited potential of LLMs to empower conversational agents, ushering a new era of comprehension and emulation of human conversational patterns.…”
Section: Navigating the Terrain Of Llms In Conversational Ai Developmentmentioning
confidence: 99%
“…Schroedl et al's (Schroedl et al, 2022) scientific endeavors shine a spotlight on the unlimited potential of LLMs to empower conversational agents, ushering a new era of comprehension and emulation of human conversational patterns.…”
Section: Navigating the Terrain Of Llms In Conversational Ai Developmentmentioning
confidence: 99%