2022
DOI: 10.48550/arxiv.2203.08542
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Lazy-MDPs: Towards Interpretable Reinforcement Learning by Learning When to Act

Abstract: Traditionally, Reinforcement Learning (RL) aims at deciding how to act optimally for an artificial agent. We argue that deciding when to act is equally important. As humans, we drift from default, instinctive or memorized behaviors to focused, thought-out behaviors when required by the situation. To enhance RL agents with this aptitude, we propose to augment the standard Markov Decision Process and make a new mode of action available: being lazy, which defers decision-making to a default policy. In addition, w… Show more

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