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Approximating two value functions instead of one: towards characterizing a new family of Deep Reinforcement Learning algorithms

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 نشر من قبل Matthia Sabatelli
 تاريخ النشر 2019
  مجال البحث الهندسة المعلوماتية
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This paper makes one step forward towards characterizing a new family of textit{model-free} Deep Reinforcement Learning (DRL) algorithms. The aim of these algorithms is to jointly learn an approximation of the state-value function ($V$), alongside an approximation of the state-action value function ($Q$). Our analysis starts with a thorough study of the Deep Quality-Value Learning (DQV) algorithm, a DRL algorithm which has been shown to outperform popular techniques such as Deep-Q-Learning (DQN) and Double-Deep-Q-Learning (DDQN) cite{sabatelli2018deep}. Intending to investigate why DQVs learning dynamics allow this algorithm to perform so well, we formulate a set of research questions which help us characterize a new family of DRL algorithms. Among our results, we present some specific cases in which DQVs performance can get harmed and introduce a novel textit{off-policy} DRL algorithm, called DQV-Max, which can outperform DQV. We then study the behavior of the $V$ and $Q$ functions that are learned by DQV and DQV-Max and show that both algorithms might perform so well on several DRL test-beds because they are less prone to suffer from the overestimation bias of the $Q$ function.



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