归纳逻辑规划与类比推理在具身机器人学习中的应用

Vesna Poprcova, G. Stojanov, A. Kulakov
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引用次数: 9

摘要

通过类比推理的能力对于从低级和高级感知到分类的许多认知过程是必不可少的。直觉上,这个想法是用已知的东西来解释似乎与旧知识相似的新观察结果。在某种意义上,它与归纳法相反,在归纳法中,为了解释观察结果,人们提出了新的假设/理论。因此,能够同时进行这两种推理的系统会更优越。在本文中,作者概述了使用类比推理的归纳逻辑规划ILP系统,并讨论了将类比预测与ILP系统相结合的结果,表明在某些情况下,可以显着提高ILP系统的学习速度。本文将研究在物理具体化的机器人试图学习其环境中的规则的背景下出现的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inductive Logic Programming (ILP) and Reasoning by Analogy in Context of Embodied Robot Learning
The ability to reason by analogy is essential for many cognitive processes from low-level and high-level perception to categorization. Intuitively, the idea is to use what is already known to explain new observations that appear similar to old knowledge. In a sense, it is opposite of induction, where to explain the observations one comes up with new hypotheses/theories. Therefore, a system capable of both types of reasoning would be superior. In this paper, the authors present an overview of Inductive Logic Programming ILP systems that use reasoning by analogy and discuss the results of combining Analogical Prediction with an ILP system, showing that, for some cases, it is possible to improve significantly the learning speed of the ILP system. This paper will examine the problems that arise in the context of a physically embodied robot that tries to learn regularities in its environment.
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