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Identifying intentions in conversational tools: a systematic mapping

Published: 23 May 2024 Publication History
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SBSI '24: Proceedings of the 20th Brazilian Symposium on Information Systems
May 2024
708 pages
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Published: 23 May 2024

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  1. chatbots
  2. conversational tools
  3. intention identification

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SBSI '24
SBSI '24: XX Brazilian Symposium on Information Systems
May 20 - 23, 2024
Juiz de Fora, Brazil

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