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Behavioral Modeling Based on Probabilistic Finite Automata: An Empirical Study

机译:基于概率有限自动机的行为建模:一项实证研究

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摘要

Imagine an agent that performs tasks according to different strategies. The goal of Behavioral Recognition (BR) is to identify which of the available strategies is the one being used by the agent, by simply observing the agent’s actions and the environmental conditions during a certain period of time. The goal of Behavioral Cloning (BC) is more ambitious. In this last case, the learner must be able to build a model of the behavior of the agent. In both settings, the only assumption is that the learner has access to a training set that contains instances of observed behavioral traces for each available strategy. This paper studies a machine learning approach based on Probabilistic Finite Automata (PFAs), capable of achieving both the recognition and cloning tasks. We evaluate the performance of PFAs in the context of a simulated learning environment (in this case, a virtual Roomba vacuum cleaner robot), and compare it with a collection of other machine learning approaches.
机译:想象一个根据不同策略执行任务的代理。行为识别(BR)的目的是通过简单地观察代理商在一定时期内的行为和环境状况,来识别代理商正在使用的可用策略中的哪一个。行为克隆(BC)的目标更加雄心勃勃。在后一种情况下,学习者必须能够建立代理行为的模型。在这两种情况下,唯一的假设是学习者可以访问训练集,该训练集包含针对每个可用策略观察到的行为痕迹的实例。本文研究了一种基于概率有限自动机(PFA)的机器学习方法,该方法能够实现识别和克隆任务。我们在模拟学习环境(在本例中为虚拟Roomba吸尘器机器人)的环境下评估PFA的性能,并将其与其他机器学习方法的集合进行比较。

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