A kernel-based model-free RL method combines Bernstein bonuses with non-parametric smoothing to improve the horizon dependence in finite-horizon regret bounds.
In: Annual Conference Computational Learning Theory (2020)
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Improved Model-based Reinforcement Learning with Smooth Kernels
A kernel-based model-free RL method combines Bernstein bonuses with non-parametric smoothing to improve the horizon dependence in finite-horizon regret bounds.