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Graph Networks as Learnable Physics Engines for Inference and Control

机译:图网络作为推理和控制的可学习物理引擎

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Understanding and interacting with everyday physical scenes requires rich knowledge about the structure of the world, represented either implicitly in a value or policy function, or explicitly in a transition model. Here we introduce a new class of learnable models–based on graph networks–which implement an inductive bias for object- and relation-centric representations of complex, dynamical systems. Our results show that as a forward model, our approach supports accurate predictions from real and simulated data, and surprisingly strong and efficient generalization, across eight distinct physical systems which we varied parametrically and structurally. We also found that our inference model can perform system identification. Our models are also differentiable, and support online planning via gradient-based trajectory optimization, as well as offline policy optimization. Our framework offers new opportunities for harnessing and exploiting rich knowledge about the world, and takes a key step toward building machines with more human-like representations of the world.
机译:要了解日常的物理场景并与之交互,就需要丰富的世界结构知识,这些知识可以隐含在价值或政策功能中,也可以隐含在过渡模型中。在这里,我们介绍了一类基于图网络的可学习模型,该模型为复杂的动态系统的以对象和关系为中心的表示实现归纳偏差。我们的结果表明,作为一个正向模型,我们的方法支持在8个不同的物理系统(根据参数和结构进行变化)下,根据真实数据和模拟数据进行准确的预测,并具有出奇的强大而有效的概括。我们还发现,我们的推理模型可以执行系统识别。我们的模型也是可微的,并通过基于梯度的轨迹优化以及离线策略优化来支持在线计划。我们的框架为利用和利用有关世界的丰富知识提供了新的机会,并且迈出了迈向构建具有更多人类形象的世界机器的关键一步。

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