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Learning a Set of Interrelated Tasks by Using Sequences of Motor Policies for a Strategic Intrinsically Motivated Learner

机译:通过使用对战略本质上积极的学习者的电机政策序列学习一系列相互关联的任务

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We propose an active learning architecture for robots, capable of organizing its learning process to achieve a field of complex tasks by learning sequences of motor policies, called Intrinsically Motivated Procedure Babbling (IM-PB). The learner can generalize over its experience to continuously learn new tasks. It chooses actively what and how to learn based by empirical measures of its own progress. In this paper, we are considering the learning of a set of interrelated tasks outcomes hierarchically organized. We introduce a framework called "procedures", which are sequences of policies defined by the combination of previously learned skills. Our algorithmic architecture uses the procedures to autonomously discover how to combine simple skills to achieve complex goals. It actively chooses between 2 strategies of goal-directed exploration: exploration of the policy space or the procedural space. We show on a simulated environment that our new architecture is capable of tackling the learning of complex motor policies, to adapt the complexity of its policies to the task at hand. We also show that our ""procedures"" framework helps the learner to tackle difficult hierarchical tasks.
机译:我们为机器人提出了积极的学习架构,能够组织其学习过程,通过学习电机政策的序列来实现复杂任务的领域,称为本质上动机程序唠叨(IM-PB)。学习者可以通过其经验概括,以不断学习新任务。它在其自身进度的实证措施中,主动选择如何学习。在本文中,我们正在考虑学习一系列相互关联的任务结果分层组织。我们介绍一个名为“程序”的框架,这是由先前学习技能的组合定义的策略序列。我们的算法架构使用程序自主地发现如何结合简单技能来实现复杂的目标。它积极选择2种目标导向探索的战略:探索政策空间或程序空间。我们在模拟环境中显示了我们的新架构能够解决复杂电机政策的学习,以使其政策的复杂性适应手头的任务。我们还表明,我们的“程序”框架有助于学习者解决困难的分层任务。

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