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Neural-encoding Human Experts' Domain Knowledge to Warm Start Reinforcement Learning

Machine Learning 2020-09-25 v4 Artificial Intelligence Machine Learning

Abstract

Deep reinforcement learning has been successful in a variety of tasks, such as game playing and robotic manipulation. However, attempting to learn \textit{tabula rasa} disregards the logical structure of many domains as well as the wealth of readily available knowledge from domain experts that could help "warm start" the learning process. We present a novel reinforcement learning technique that allows for intelligent initialization of a neural network weights and architecture. Our approach permits the encoding domain knowledge directly into a neural decision tree, and improves upon that knowledge with policy gradient updates. We empirically validate our approach on two OpenAI Gym tasks and two modified StarCraft 2 tasks, showing that our novel architecture outperforms multilayer-perceptron and recurrent architectures. Our knowledge-based framework finds superior policies compared to imitation learning-based and prior knowledge-based approaches. Importantly, we demonstrate that our approach can be used by untrained humans to initially provide >80% increase in expected reward relative to baselines prior to training (p < 0.001), which results in a >60% increase in expected reward after policy optimization (p = 0.011).

Keywords

Cite

@article{arxiv.1902.06007,
  title  = {Neural-encoding Human Experts' Domain Knowledge to Warm Start Reinforcement Learning},
  author = {Andrew Silva and Matthew Gombolay},
  journal= {arXiv preprint arXiv:1902.06007},
  year   = {2020}
}
R2 v1 2026-06-23T07:42:25.922Z