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Instability and variability of Deep Reinforcement Learning (DRL) algorithms tend to adversely affect their performance. Averaged-DQN is a simple extension to the DQN algorithm, based on averaging previously learned Q-values estimates, which leads to a more stable training procedure and improved performance by reducing approximation error variance in the target values. To understand the effect of the algorithm, we examine the source of value function estimation errors and provide an analytical comparison within a simplified model. We further present experiments on the Arcade Learning Environment benchmark that demonstrate significantly improved stability and performance due to the proposed extension.
Author Information
Oron Anschel (Technion)
Nir Baram (Technion - Israel Institute of Technology)
Nahum Shimkin (Technion)
Related Events (a corresponding poster, oral, or spotlight)
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2017 Poster: Averaged-DQN: Variance Reduction and Stabilization for Deep Reinforcement Learning »
Wed. Aug 9th 08:30 AM -- 12:00 PM Room Gallery #99
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2017 Poster: End-to-End Differentiable Adversarial Imitation Learning »
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2017 Talk: End-to-End Differentiable Adversarial Imitation Learning »
Nir Baram · Oron Anschel · Itai Caspi · Shie Mannor