What are the most effective techniques for deep reinforcement learning in transportation?

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Deep reinforcement learning (DRL) is a branch of machine learning that combines reinforcement learning and deep neural networks to learn from data and optimize complex behaviors. DRL has been applied to various domains, such as games, robotics, and natural language processing. But what about transportation? How can DRL help improve traffic flow, reduce emissions, and enhance safety? In this article, we will explore some of the most effective techniques for DRL in transportation, and how they can address the challenges and opportunities in this field.

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