Title :
Self-Organizing Neural Networks Integrating Domain Knowledge and Reinforcement Learning
Author :
Teck-Hou Teng ; Ah-Hwee Tan ; Zurada, Jacek M.
Author_Institution :
Sch. of Comput. Eng., Nanyang Technol. Univ., Singapore, Singapore
Abstract :
The use of domain knowledge in learning systems is expected to improve learning efficiency and reduce model complexity. However, due to the incompatibility with knowledge structure of the learning systems and real-time exploratory nature of reinforcement learning (RL), domain knowledge cannot be inserted directly. In this paper, we show how self-organizing neural networks designed for online and incremental adaptation can integrate domain knowledge and RL. Specifically, symbol-based domain knowledge is translated into numeric patterns before inserting into the self-organizing neural networks. To ensure effective use of domain knowledge, we present an analysis of how the inserted knowledge is used by the self-organizing neural networks during RL. To this end, we propose a vigilance adaptation and greedy exploitation strategy to maximize exploitation of the inserted domain knowledge while retaining the plasticity of learning and using new knowledge. Our experimental results based on the pursuit-evasion and minefield navigation problem domains show that such self-organizing neural network can make effective use of domain knowledge to improve learning efficiency and reduce model complexity.
Keywords :
computational complexity; greedy algorithms; learning (artificial intelligence); self-organising feature maps; RL; domain knowledge; greedy exploitation strategy; incremental adaptation; learning efficiency; learning systems; minefield navigation problem; model complexity; online adaptation; pursuit-evasion; reinforcement learning; self-organizing neural networks; symbol-based domain knowledge; Bayes methods; Knowledge engineering; Learning (artificial intelligence); Learning systems; Neural networks; Training; Vectors; Adaptive resonance theory (ART); domain knowledge; reinforcement learning (RL); self-organizing neural networks; self-organizing neural networks.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2014.2327636