论文标题
深厚的增强学习及其神经科学意义
Deep Reinforcement Learning and its Neuroscientific Implications
论文作者
论文摘要
强大的人工智能的出现正在定义神经科学中的新研究方向。迄今为止,这项研究主要集中在图像分类之类的任务中使用监督学习培训的深度神经网络。但是,迄今为止,最近的AI工作中还有另一个领域受到神经科学家的关注,但可能具有深远的神经科学意义:深度强化学习。 Deep RL提供了一个全面的框架,用于研究学习,代表和决策之间的相互作用,向大脑科学提供了一套新的研究工具和广泛的新假设。在本综述中,我们提供了深层RL的高级介绍,讨论其对神经科学的一些初步应用,并调查其对大脑和行为研究的广泛影响,并以下一阶段研究的机会列表。
The emergence of powerful artificial intelligence is defining new research directions in neuroscience. To date, this research has focused largely on deep neural networks trained using supervised learning, in tasks such as image classification. However, there is another area of recent AI work which has so far received less attention from neuroscientists, but which may have profound neuroscientific implications: deep reinforcement learning. Deep RL offers a comprehensive framework for studying the interplay among learning, representation and decision-making, offering to the brain sciences a new set of research tools and a wide range of novel hypotheses. In the present review, we provide a high-level introduction to deep RL, discuss some of its initial applications to neuroscience, and survey its wider implications for research on brain and behavior, concluding with a list of opportunities for next-stage research.