Language inference with multi-head automata through reinforcement learning
Type :
Conference paper
Publication Status :
Published
Access :
restrictedAccess
Abstract
The purpose of this paper is to use reinforcement learning to model learning agents which can recognize formal languages. Agents are modeled as simple multi-head automaton, a new model of finite automaton that uses multiple heads, and six different languages are formulated as reinforcement learning problems. Two different algorithms are used for optimization. First algorithm is Q-learning which trains gated recurrent units to learn optimal policies. The second one is genetic algorithm which searches for the optimal solution by using evolution-inspired operations. The results show that genetic algorithm performs better than Q-learning algorithm in general but Q-learning algorithm finds solutions faster for regular languages.
Source :
2020 International Joint Conference on Neural Networks (IJCNN)
Date :
2020
Publisher :
IEEE
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