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A Survey on Conversational Search and Applications in Biomedicine

Published: 12 June 2023 Publication History

Abstract

This paper aims to provide a radical rundown on Conversational Search (ConvSearch), an approach to enhance the information retrieval (IR) method where users engage in a dialogue for the information-seeking tasks. In this survey, we predominantly focused on the human interactive characteristics of the ConvSearch systems, highlighting the operations of the action modules, likely the retrieval system, question-answering, and recommender system. We labeled various ConvSearch research problems in knowledge bases, natural language processing, and dialogue management systems with action modules. We further categorized the framework to ConvSearch, and the application is directed toward biomedical and healthcare fields for the utilization of clinical social technology. Finally, we conclude by talking through the challenges and issues of ConvSearch, particularly in Bio-Medicine. Our main aim is to provide an integrated and unified vision of the ConvSearch components from different fields, which benefit the information-seeking process in healthcare systems.

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  • (2024)Query reformulation system based on WordNet and word vectors clustersJournal of Intelligent & Fuzzy Systems10.3233/JIFS-23629646:4(9119-9137)Online publication date: 18-Apr-2024

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ACMSE '23: Proceedings of the 2023 ACM Southeast Conference
April 2023
216 pages
ISBN:9781450399210
DOI:10.1145/3564746
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Author Tags

  1. information retrieval
  2. conversational search
  3. question answering
  4. knowledge base
  5. dialogue management systems
  6. recommender systems
  7. generative language models
  8. biomedical convsearch
  9. privacy concerns

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ACMSE 2023: 2023 ACM Southeast Conference
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  • (2024)Query reformulation system based on WordNet and word vectors clustersJournal of Intelligent & Fuzzy Systems10.3233/JIFS-23629646:4(9119-9137)Online publication date: 18-Apr-2024

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