Integrated Platform for Understanding Physical Prior & Task Learning

Namrata Sharma, Chang Hwa Lee, Sang Wan Lee
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Abstract

Recently, many reinforcement learning algorithms within the field of robotics have demonstrated considerable performance in multiple physical environment tasks. However, their learning patterns are very different from those of humans. Humans develop their prior knowledge about the physical world and utilize it in task learning to learn effectively. On the other hand, in the case of general machine learning algorithms, tasks are performed without prior knowledge, thus creating a difference between humans and robots in their initial stages of learning. In order to reconcile this difference, it is necessary to study the learning and utilization of prior knowledge in reinforcement learning algorithms. To accomplish this, we propose a platform that integrates prior knowledge learning into task learning environments, and then we show configuration and application examples to emphasize the necessity and usability of this platform.
理解物理先验与任务学习的集成平台
近年来,机器人领域的许多强化学习算法在多种物理环境任务中表现出相当大的性能。然而,它们的学习模式与人类非常不同。人类发展了他们对物质世界的先验知识,并在任务学习中利用它来有效地学习。另一方面,在一般机器学习算法的情况下,任务是在没有先验知识的情况下执行的,因此在学习的初始阶段,人类和机器人之间存在差异。为了调和这种差异,有必要研究强化学习算法中先验知识的学习和利用。为了实现这一目标,我们提出了一个将先验知识学习集成到任务学习环境中的平台,然后通过配置和应用实例来强调该平台的必要性和可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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