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Task Engagement Inference Within Distributed Multiparty Human-Machine Teaming via Topic Modeling

机译:通过主题建模分布式多方人机组合中的任务参与推断

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Research in Intelligent Awareness Systems (IAS) focuses on designing systems that are aware of their current environment by monitoring human interactions and making inferences on when to engage with human counterparts. A potential gap is task engagement inference for distributed human-machine teaming. The objective of this paper is a proposed intelligent awareness system via task topic modeling for task engagement inference within these domains. If the system has information on "what" teammates are discussing or the task topic, it is better informed prior to engaging. The proposed task topic model is applied to two simulated multiparty, distributed teaming interactions and evaluated on its ability to infer the current task topic. For both tasks, the model performs well over the random baseline, however the performance is degraded for interactions with more robust dialogue. This work has the potential of informing the development of intelligent awareness systems within distributed multiparty teaming and collaborative endeavors.
机译:智能意识系统(IAS)的研究侧重于通过监测人类的互动并对人类对应者进行何时何时互动来设计目前环境的设计系统。潜在的差距是分布式人机团队的任务接合推断。本文的目的是通过在这些域内的任务接录推断进行任务主题建模的提议智能意识系统。如果该系统有关于“队友的信息是讨论或任务主题的信息,则在参与之前更好地通知。所提出的任务主题模型应用于两个模拟多方,分布式的合作交互,并评估其推断当前任务主题的能力。对于这两个任务,该模型在随机基线上执行良好,但是对于与更强大的对话的交互来说,性能劣化。这项工作有可能向分布式多方组合和协作努力提供信息开发智能意识系统。

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