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Schema Networks: Zero-shot Transfer with a Generative Causal Model of Intuitive Physics

机译:架构网络:具有直观物理学的生成因果模型的零拍摄转移

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摘要

The recent adaptation of deep neural network-based methods to reinforcement learning and planning domains has yielded remarkable progress on individual tasks. Nonetheless, progress on task-to-task transfer remains limited. In pursuit of efficient and robust generalization, we introduce the Schema Network, an object-oriented generative physics simulator capable of disentangling multiple causes of events and reasoning backward through causes to achieve goals. The richly structured architecture of the Schema Network can learn the dynamics of an environment directly from data. We compare Schema Networks with Asynchronous Advantage Actor-Critic and Progressive Networks on a suite of Breakout variations, reporting results on training efficiency and zero-shot generalization, consistently demonstrating faster, more robust learning and better transfer. We argue that generalizing from limited data and learning causal relationships are essential abilities on the path toward generally intelligent systems.
机译:最近对强化学习和规划域的基于深度神经网络的方法的适应在各个任务中产生了显着的进展。尽管如此,任务到任务转移的进展仍然有限。为了追求有效和稳健的泛化,我们介绍了模式网络,这是一种面向对象的生成物理模拟器,能够解开事件的多种原因,并通过原因来实现目标。模式网络的丰富结构化架构可以直接从数据学习环境的动态。我们在一套突破变化的情况下比较了与异步优势演员演员和渐进网络的架构网络,报告结果培训效率和零拍普遍,始终如一地展示更快,更强大的学习和更好的转移。我们认为,从有限的数据和学习因果关系中的概括是关于一般智能系统的路径的基本能力。

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