441 research outputs found
Discretizing Continuous Action Space for On-Policy Optimization
In this work, we show that discretizing action space for continuous control
is a simple yet powerful technique for on-policy optimization. The explosion in
the number of discrete actions can be efficiently addressed by a policy with
factorized distribution across action dimensions. We show that the discrete
policy achieves significant performance gains with state-of-the-art on-policy
optimization algorithms (PPO, TRPO, ACKTR) especially on high-dimensional tasks
with complex dynamics. Additionally, we show that an ordinal parameterization
of the discrete distribution can introduce the inductive bias that encodes the
natural ordering between discrete actions. This ordinal architecture further
significantly improves the performance of PPO/TRPO.Comment: Accepted at AAAI Conference on Artificial Intelligence (2020) in New
York, NY, USA. An open source implementation can be found at
https://github.com/robintyh1/onpolicybaseline
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