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A Framework to Discover and Reuse Object-Oriented Options in Reinforcement Learning

机译:在强化学习中发现和重用面向对象选项的框架

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Reinforcement Learning is a successful yet slow technique to train autonomous agents. Option-based solutions can be used to accelerate learning and to transfer learned behaviors across tasks by encapsulating a partial policy. However, commonly these options are specific for a single task, do not take in account similar features between tasks and may not correspond exactly to an optimal behavior when transferred to another task. Therefore, unprincipled transfer might provide bad options to the agent, hampering the learning process. We here propose a way to discover and reuse learned object-oriented options in aprobabilistic way in order to enable better actuation choices to the agent in multiple different tasks. Our experimental evaluation show that our proposal is able to learn and successfully reuse options across different tasks.
机译:强化学习是一种训练自主代理的成功而缓慢的技术。通过封装部分策略,基于选项的解决方案可用于加速学习并在任务之间转移学习到的行为。但是,通常这些选项是针对单个任务的,没有考虑到任务之间的相似功能,并且在转移到另一个任务时可能并不完全对应于最佳行为。因此,无原则的传输可能会给代理提供不好的选择,从而阻碍了学习过程。我们在这里提出一种以概率方式发现和重用学习的面向对象选项的方法,以便在多个不同任务中为代理提供更好的激活选择。我们的实验评估表明,我们的建议能够学习并成功地在不同任务之间重用选项。

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