论文标题
在分销转移中学习机器人决策:一项调查
Learning for Robot Decision Making under Distribution Shift: A Survey
论文作者
论文摘要
随着深度学习领域的最新进展,在各种机器人系统中广泛实施了基于学习的方法,这些方法可以帮助机器人了解其环境并做出明智的决策以实现各种各样的任务或目标。但是,当基于学习的方法出现与训练过程中的投入不同时,基于学习的方法的概括性很差。任何采用基于学习方法的机器人系统都容易转移分配,这可能会导致代理做出导致性能降低甚至灾难性失败的决策。在本文中,我们讨论了文献中提出的各种技术,以帮助或改善机器人系统分配变化的决策。我们介绍了现有文献的分类学,并根据该分类法介绍了该地区现有方法的调查。最后,我们还确定了该领域的一些开放问题,这些问题可以作为未来的研究方向。
With the recent advances in the field of deep learning, learning-based methods are widely being implemented in various robotic systems that help robots understand their environment and make informed decisions to achieve a wide variety of tasks or goals. However, learning-based methods have repeatedly been shown to have poor generalization when they are presented with inputs that are different from those during training leading to the problem of distribution shift. Any robotic system that employs learning-based methods is prone to distribution shift which might lead the agents to make decisions that lead to degraded performance or even catastrophic failure. In this paper, we discuss various techniques that have been proposed in the literature to aid or improve decision making under distribution shift for robotic systems. We present a taxonomy of existing literature and present a survey of existing approaches in the area based on this taxonomy. Finally, we also identify a few open problems in the area that could serve as future directions for research.