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 distributional policy optimization


Distributional Policy Optimization: An Alternative Approach for Continuous Control

Neural Information Processing Systems

We identify a fundamental problem in policy gradient-based methods in continuous control. As policy gradient methods require the agent's underlying probability distribution, they limit policy representation to parametric distribution classes. We show that optimizing over such sets results in local movement in the action space and thus convergence to sub-optimal solutions. We suggest a novel distributional framework, able to represent arbitrary distribution functions over the continuous action space. Using this framework, we construct a generative scheme, trained using an off-policy actor-critic paradigm, which we call the Generative Actor Critic (GAC). Compared to policy gradient methods, GAC does not require knowledge of the underlying probability distribution, thereby overcoming these limitations. Empirical evaluation shows that our approach is comparable and often surpasses current state-of-the-art baselines in continuous domains.



Reviews: Distributional Policy Optimization: An Alternative Approach for Continuous Control

Neural Information Processing Systems

This paper proposes a distributional policy optimization (DPO) framework and its practical implementation, generative actor-critic (GAC) that belongs to off-policy actor-critic methods. Policy gradient methods, which are currently dominant in continuous control problems, are prone to local optima, thus it is valuable to propose a method addressing that problem fundamentally. Overall, the paper is well written and the proposed algorithm seems novel and sound. Does it stand for'every' state-action pair and state, or the state-action pairs that are visited by the current policy \pi_k'? If it corresponds to the latter, it seems that DPO would possibly not converge to the global optima.


Distributional Policy Optimization: An Alternative Approach for Continuous Control

Neural Information Processing Systems

We identify a fundamental problem in policy gradient-based methods in continuous control. As policy gradient methods require the agent's underlying probability distribution, they limit policy representation to parametric distribution classes. We show that optimizing over such sets results in local movement in the action space and thus convergence to sub-optimal solutions. We suggest a novel distributional framework, able to represent arbitrary distribution functions over the continuous action space. Using this framework, we construct a generative scheme, trained using an off-policy actor-critic paradigm, which we call the Generative Actor Critic (GAC).


Distributional Policy Optimization: An Alternative Approach for Continuous Control

Tessler, Chen, Tennenholtz, Guy, Mannor, Shie

Neural Information Processing Systems

We identify a fundamental problem in policy gradient-based methods in continuous control. As policy gradient methods require the agent's underlying probability distribution, they limit policy representation to parametric distribution classes. We show that optimizing over such sets results in local movement in the action space and thus convergence to sub-optimal solutions. We suggest a novel distributional framework, able to represent arbitrary distribution functions over the continuous action space. Using this framework, we construct a generative scheme, trained using an off-policy actor-critic paradigm, which we call the Generative Actor Critic (GAC).


Distributional Policy Optimization: An Alternative Approach for Continuous Control

Tessler, Chen, Tennenholtz, Guy, Mannor, Shie

arXiv.org Artificial Intelligence

We identify a fundamental problem in policy gradient-based methods in continuous control. As policy gradient methods require the agent's underlying probability distribution, they limit policy representation to parametric distribution classes. We show that optimizing over such sets results in local movement in the action space and thus convergence to sub-optimal solutions. We suggest a novel distributional framework, able to represent arbitrary distribution functions over the continuous action space. Using this framework, we construct a generative scheme, trained using an off-policy actor-critic paradigm, which we call the Generative Actor Critic (GAC). Compared to policy gradient methods, GAC does not require knowledge of the underlying probability distribution, thereby overcoming these limitations. Empirical evaluation shows that our approach is comparable and often surpasses current state-of-the-art baselines in continuous domains.