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Collaborative Communication Interruption Management System (C-CIMS): Modeling Interruption Timings via Prosodic and Topic Modeling for Human-Machine Teams

机译:协作通信中断管理系统(C-CIMS):通过人机团队的韵律和主题建模对中断时间进行建模

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摘要

Human-machine teaming aims to meld human cognitive strengths and the unique capabilities of smart machines to create intelligent teams adaptive to rapidly changing circumstances. One major contributor to the problem of human-machine teaming is a lack of communication skills on the part of the machine. The primary objective of this research is focused on a machine's interruption timings or when a machine should share and communicate information with human teammates within human-machine teaming interactions. Previous work addresses interruption timings from the perspective of single human, multitasking and multiple human, single task interactions. The primary aim of this dissertation is to augment this area by approaching the same problem from the perspective of a multiple human, multitasking interaction. The proposed machine is the Collaborative Communication Interruption Management System (C-CIMS) which is tasked with leveraging speech information from a human-human task and making inferences on when to interrupt with information related to an orthogonal human-machine task. This study and previous literature both suggest monitoring task boundaries and engagement as candidate moments of interruptibility within multiple human, multitasking interactions. The goal then becomes designing an intermediate step between human teammate communication and points of interruptibility within these interactions. The proposed intermediate step is the mapping of low-level speech information such as prosodic and lexical information onto higher constructs indicative of interruptibility. C-CIMS is composed of a Task Boundary Prosody Model, a Task Boundary Topic Model, and finally a Task Engagement Topic Model. Each of these components are evaluated separately in terms of how they perform within two different simulated human-machine teaming scenarios and the speed vs. accuracy tradeoffs as well as other limitations of each module. Overall the Task Boundary Prosody Model is tractable within a real-time system because of the low-latency in processing prosodic information, but is less accurate at predicting task boundaries even within human-machine interactions with simple dialogue. Conversely, the Task Boundary and Task Engagement Topic Models do well inferring task boundaries and engagement respectively, but are intractable in a real-time system because of the bottleneck in producing automatic speech recognition transcriptions to make interruption decisions. The overall contribution of this work is a novel approach to predicting interruptibility within human-machine teams by modeling higher constructs indicative of interruptibility using low-level speech information.
机译:人机协作旨在融合人的认知能力和智能机的独特功能,以创建适应快速变化的环境的智能团队。人机组合问题的一个主要促成因素是人机方面缺乏沟通技巧。这项研究的主要目标集中在机器的中断时间或机器应在人机团队互动中与人队友共享和交流信息的时间。先前的工作从单人,多任务和多人,单任务交互的角度解决了中断时间。本文的主要目的是通过从多人,多任务交互的角度解决同一问题来扩大这一领域。拟议中的机器是协作通信中断管理系统(C-CIMS),其任务是利用人类任务中的语音信息并推断何时中断与正交人机任务相关的信息。这项研究和以前的文献都建议监视任务边界和参与作为在多个人,多任务交互中可中断的候选时刻。然后,目标就是设计人员队友交流与这些互动中的可中断点之间的中间步骤。提议的中间步骤是将低级语音信息(例如韵律和词汇信息)映射到指示可中断性的较高结构上。 C-CIMS由任务边界韵律模型,任务边界主题模型和最后的任务参与主题模型组成。这些组件中的每一个都将根据它们在两种不同的模拟人机组合场景中的性能以及速度与准确性之间的权衡以及每个模块的其他限制进行评估。总体而言,任务边界韵律模型由于在处理韵律信息方面的低延迟而在实时系统中易于处理,但即使在具有简单对话的人机交互中,也难以准确预测任务边界。相反,任务边界和任务参与主题模型分别可以很好地推断任务边界和参与度,但是由于产生自动语音识别转录以做出中断决策的瓶颈,在实时系统中很难处理。这项工作的总体贡献是一种新颖的方法,可通过使用低级语音信息对表示可中断性的较高结构进行建模,从而预测人机团队中的可中断性。

著录项

  • 作者

    Peters, Nia S.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Engineering.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 105 p.
  • 总页数 105
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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