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Zap Q-Learning With Nonlinear Function Approximation

Authors :
Chen, Shuhang
Devraj, Adithya M.
Lu, Fan
Bušić, Ana
Meyn, Sean P.
Publication Year :
2019

Abstract

Zap Q-learning is a recent class of reinforcement learning algorithms, motivated primarily as a means to accelerate convergence. Stability theory has been absent outside of two restrictive classes: the tabular setting, and optimal stopping. This paper introduces a new framework for analysis of a more general class of recursive algorithms known as stochastic approximation. Based on this general theory, it is shown that Zap Q-learning is consistent under a non-degeneracy assumption, even when the function approximation architecture is nonlinear. Zap Q-learning with neural network function approximation emerges as a special case, and is tested on examples from OpenAI Gym. Based on multiple experiments with a range of neural network sizes, it is found that the new algorithms converge quickly and are robust to choice of function approximation architecture.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1910.05405
Document Type :
Working Paper