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Petri Net Machines for Human-Agent Interaction

Christian Dondrup, Ioannis Papaioannou, Oliver Lemon

发表年份
2019
引用次数
6
访问权限
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摘要

Smart speakers and robots become ever more prevalent in our daily lives. These agents are able to execute a wide range of tasks and actions and, therefore, need systems to control their execution. Current state-of-the-art such as (deep) reinforcement learning, however, requires vast amounts of data for training which is often hard to come by when interacting with humans. To overcome this issue, most systems still rely on Finite State Machines. We introduce Petri Net Machines which present a formal definition for state machines based on Petri Nets that are able to execute concurrent actions reliably, execute and interleave several plans at the same time, and provide an easy to use modelling language. We show their workings based on the example of Human-Robot Interaction in a shopping mall.

关键词

Petri netComputer scienceReinforcement learningRobotState (computer science)Finite-state machineRange (aeronautics)Artificial intelligenceHuman–computer interactionDistributed computing

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