Authors
Thomas M Moerland, Joost Broekens, Aske Plaat, Catholijn M Jonker
Publication date
2018/5/24
Journal
arXiv preprint arXiv:1805.09613
Description
A core novelty of Alpha Zero is the interleaving of tree search and deep learning, which has proven very successful in board games like Chess, Shogi and Go. These games have a discrete action space. However, many real-world reinforcement learning domains have continuous action spaces, for example in robotic control, navigation and self-driving cars. This paper presents the necessary theoretical extensions of Alpha Zero to deal with continuous action space. We also provide some preliminary experiments on the Pendulum swing-up task, empirically showing the feasibility of our approach. Thereby, this work provides a first step towards the application of iterated search and learning in domains with a continuous action space.
Total citations
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Scholar articles
TM Moerland, J Broekens, A Plaat, CM Jonker - arXiv preprint arXiv:1805.09613, 2018