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Automatic Weight Learning for Multiple Data Sources when Learning from Demonstration

机译:从演示学习时,自动重量学习多个数据源

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Traditional approaches to programming robots are generally inaccessible to non-robotics-experts. A promising exception is the Learning from Demonstration paradigm. Here a policy mapping world observations to action selection is learned, by generalizing from task demonstrations by a teacher. Most Learning from Demonstration work to date considers data from a single teacher. In this paper, we consider the incorporation of demonstrations from multiple teachers. In particular, we contribute an algorithm that handles multiple data sources, and additionally reasons about reliability differences between them. For example, multiple teachers could be inequally proficient at performing the demonstrated task. We introduce Demonstration Weight Learning (DWL) as a Learning from Demonstration algorithm that explicitly represents multiple data sources and learns to select between them, based on their observed reliability and according to an adaptive expert learning inspired approach. We present a first implementation of DWL within a simulated robot domain. Data sources are shown to differ in reliability, and weighting is found impact task execution success. Furthermore, DWL is shown to produce appropriate data source weights that improve policy performance.
机译:非机器人专家通常无法访问传统的编程机器人方法。有希望的例外是从示范范式的学习。在这里,通过教师任务示范从任务示范概括来了解到对行动选择的策略映射。大多数学习从演示工作到迄今为止从一位老师那里考虑数据。在本文中,我们考虑从多个教师纳入示威活动。特别是,我们有助于处理多个数据源的算法,并且还有关于它们之间的可靠性差异的原因。例如,多个教师可以在执行展示的任务时不等熟练地熟练。我们将演示权重学习(DWL)介绍,作为从演示算法的学习,该演示算法明确代表多个数据源,并根据其观察到的可靠性来选择它们之间的选择,并根据自适应专家学习灵感的方法。我们在模拟机器人域内提供了DWL的第一次实现。数据源显示为可靠性的不同,并且找到了加权影响任务执行成功。此外,DWL显示为产生改善策略性能的适当数据源权重。

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