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Learning Quickly to Plan Quickly Using Modular Meta-Learning

机译:使用模块化元学习快速学习以快速计划

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Multi-object manipulation problems in continuous state and action spaces can be solved by planners that search over sampled values for the continuous parameters of operators. The efficiency of these planners depends critically on the effectiveness of the samplers used, but effective sampling in turn depends on details of the robot, environment, and task. Our strategy is to learn functions called speciatizers that generate values for continuous operator parameters, given a state description and values for the discrete parameters. Rather than trying to learn a single specializer for each operator from large amounts of data on a single task, we take a modular meta-learning approach. We train on multiple tasks and learn a variety of specializers that, on a new task, can be quickly adapted using relatively little data - thus, our system learns quickly to plan quickly using these specializers. We validate our approach experimentally in simulated 3D pick-and-place tasks with continuous state and action spaces. Visit http://tinyurl.com/chitnis-icra-19 for a supplementary video.
机译:计划者可以搜索连续状态和动作空间中的多对象操纵问题,这些计划者可以在采样值中搜索运算符的连续参数。这些计划者的效率在很大程度上取决于所使用的采样器的有效性,但是有效的采样又取决于机器人,环境和任务的细节。我们的策略是学习称为speciatizers的函数,这些函数会为给定状态描述和离散参数值生成连续的操作员参数值。我们采用模块化的元学习方法,而不是尝试从单个任务上的大量数据中为每个操作员学习一个专门化的专家。我们在多个任务上进行培训,并学习各种专业化知识,在一项新任务上,可以使用相对较少的数据快速适应这些专业化知识-因此,我们的系统很快学会了使用这些专业化知识进行快速计划。我们在具有连续状态和动作空间的模拟3D拾取和放置任务中通过实验验证了我们的方法。请访问http://tinyurl.com/chitnis-icra-19以获得补充视频。

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