Curiosity-Driven Multi-Criteria Hindsight Experience Replay
Lanier, John B., McAleer, Stephen, Baldi, Pierre
–arXiv.org Artificial Intelligence
Dealing with sparse rewards is a longstanding challenge in reinforcement learning. The recent use of hindsight methods have achieved success on a variety of sparse-reward tasks, but they fail on complex tasks such as stacking multiple blocks with a robot arm in simulation. Curiosity-driven exploration using the prediction error of a learned dynamics model as an intrinsic reward has been shown to be effective for exploring a number of sparse-reward environments. We present a method that combines hindsight with curiosity-driven exploration and curriculum learning in order to solve the challenging sparse-reward block stacking task. We are the first to stack more than two blocks using only sparse reward without human demonstrations.
arXiv.org Artificial Intelligence
Jun-9-2019
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