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Statistical dialog management for health interventions.

机译:用于健康干预的统计对话管理。

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摘要

Research endeavors on spoken dialogue systems in the 1990s and 2000s have led to the deployment of commercial spoken dialogue systems (SDS) in microdomains such as customer service automation, reservation/booking and question answering systems. Recent research in SDS has been focused on the development of applications in different domains (e.g. virtual counseling, personal coaches, social companions) which requires more sophistication than the previous generation of commercial SDS. The focus of this research project is the delivery of behavior change interventions based on the brief intervention counseling style via spoken dialogue systems.;Brief interventions (BI) are evidence-based, short, well structured, one-on-one counseling sessions. Many challenges are involved in delivering BIs to people in need, such as finding the time to administer them in busy doctors' offices, obtaining the extra training that helps staff become comfortable providing these interventions, and managing the cost of delivering the interventions. Fortunately, recent developments in spoken dialogue systems make the development of systems that can deliver brief interventions possible.;The overall objective of this research is to develop a data-driven, adaptable dialogue system for brief interventions for problematic drinking behavior, based on reinforcement learning methods. The implications of this research project includes, but are not limited to, assessing the feasibility of delivering structured brief health interventions with a data-driven spoken dialogue system. Furthermore, while the experimental system focuses on harmful alcohol drinking as a target behavior in this project, the produced knowledge and experience may also lead to implementation of similarly structured health interventions and assessments other than the alcohol domain (e.g. obesity, drug use, lack of exercise), using statistical machine learning approaches.;In addition to designing a dialog system, the semantic and emotional meanings of user utterances have high impact on interaction. To perform domain specific reasoning and recognize concepts in user utterances, a named-entity recognizer and an ontology are designed and evaluated. To understand affective information conveyed through text, lexicons and sentiment analysis module are developed and tested.
机译:1990年代和2000年代对口头对话系统的研究努力导致了商业口语对话系统(SDS)在微域中的部署,例如客户服务自动化,预订/预订和问答系统。 SDS的最新研究集中于在不同领域(例如虚拟咨询,私人教练,社交同伴)中开发应用程序,这比上一代商业SDS更加复杂。该研究项目的重点是通过口头对话系统基于简短的干预咨询风格提供行为改变干预。简短干预(BI)是基于证据的,简短的,结构合理的一对一咨询会议。向需要帮助的人提供BI时会遇到很多挑战,例如寻找时间在繁忙的医生办公室对其进行管理,获得额外的培训以帮助员工适应这些干预措施,以及管理干预措施的成本。幸运的是,口语对话系统的最新发展使得可以进行短暂干预的系统的开发成为可能;该研究的总体目标是基于强化学习,开发一种数据驱动的,适应性强的对话系统,用于对有问题的饮酒行为进行短暂干预方法。该研究项目的含义包括但不限于评估使用数据驱动的口语对话系统提供结构化的简短健康干预措施的可行性。此外,虽然实验系统将有害饮酒作为该项目的目标行为,但所产生的知识和经验也可能导致实施与酒精领域不同的结构相似的健康干预措施和评估(例如,肥胖,吸毒,练习),使用统计机器学习方法。;除了设计对话系统之外,用户话语的语义和情感含义对交互也有很大影响。为了执行特定于域的推理并识别用户话语中的概念,设计并评估了命名实体识别器和本体。为了理解通过文本传达的情感信息,开发并测试了词典和情感分析模块。

著录项

  • 作者

    Yasavur, Ugan.;

  • 作者单位

    Florida International University.;

  • 授予单位 Florida International University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 181 p.
  • 总页数 181
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:54:10

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