Multi-task Reinforcement Learning with a Planning Quasi-Metric
Vincent Micheli, Karthigan Sinnathamby, François Fleuret
- Year
- 2020
- Access
- Open access
Abstract
We introduce a new reinforcement learning approach combining a planning quasi-metric (PQM) that estimates the number of steps required to go from any state to another, with task-specific "aimers" that compute a target state to reach a given goal. This decomposition allows the sharing across tasks of a task-agnostic model of the quasi-metric that captures the environment's dynamics and can be learned in a dense and unsupervised manner. We achieve multiple-fold training speed-up compared to recently published methods on the standard bit-flip problem and in the MuJoCo robotic arm simulator.
Keywords
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