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A neurally plausible model learns successor representations in partially observable environments

机译:一个神经典糟的模型在部分可观察环境中了解了继任者表示

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Animals need to devise strategies to maximize returns while interacting with their environment based on incoming noisy sensory observations. Task-relevant states, such as the agent's location within an environment or the presence of a predator, are often not directly observable but must be inferred using available sensory information. Successor representations (SR) have been proposed as a middle-ground between model-based and model-free reinforcement learning strategies, allowing for fast value computation and rapid adaptation to changes in the reward function or goal locations. Indeed, recent studies suggest that features of neural responses are consistent with the SR framework. However, it is not clear how such representations might be learned and computed in partially observed, noisy environments. Here, we introduce a neurally plausible model using distributional successor features which builds on the distributed distributional code for the representation and computation of uncertainty, and which allows for efficient value function computation in partially observed environments via the successor representation. We show that distributional successor features can support reinforcement learning in noisy environments in which direct learning of successful policies is infeasible.
机译:动物需要制定策略,以最大化回报,同时根据传入嘈杂的感官观察与环境进行交互。任务相关状态,例如在环境中的代理的位置或捕食者的存在,通常不是直接可观察的,但必须使用可用的感官信息推断。在基于模型和无模型加强学习策略之间建议的继承人表示(SR)已被提出作为中间地,允许快速计算和快速适应对奖励功能或目标位置的变化。实际上,最近的研究表明神经反应的特征与SR框架一致。但是,目前尚不清楚这些表示如何在部分观察到的,嘈杂的环境中如何学习和计算。这里,我们使用分布式接班室特征引入神经典糟的模型,该特征在分布式分布代码上构建了表示和计算不确定性的计算,并且允许通过继承者表示在部分观察到的环境中的有效价值函数计算。我们表明,分布式继承人功能可以支持嘈杂的环境中的加固学习,直接学习成功的政策是不可行的。

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