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A linear-complexity reparameterisation strategy for the hierarchical bootstrapping of capabilities within perception-action architectures

机译:一种线性复杂性重新参数化策略,用于感知动作体系结构中功能的层次自举

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摘要

Perception-action (PA) architectures are capable of solving a number of problems associated with artificial cognition, in particular, difficulties concerned with framing and symbol grounding. Existing PA algorithms tend to be 'horizontal' in the sense that learners maintain their prior percept-motor competences unchanged throughout learning. We here present a methodology for simultaneous 'horizontal' and 'vertical' perception-action learning in which there additionally exists the capability for incremental accumulation of novel percept-motor competences in a hierarchical fashion.rnThe proposed learning mechanism commences with a set of primitive 'innate' capabilities and progressively modifies itself via recursive generalising of parametric spaces within the linked perceptual and motor domains so as to represent environmental affordances in maximally-compact manner. Efficient reparameterising of the percept domain is here accomplished by the exploratory elimination of dimensional redundancy and environmental context.rnExperimental results demonstrate that this approach exhibits an approximately linear increase in computational requirements when learning in a typical unconstrained environment, as compared with at least polynomially-increasing requirements for a classical perception-action system.
机译:感知动作(PA)架构能够解决与人工认知相关的许多问题,尤其是与成帧和符号接地有关的困难。在学习者在整个学习过程中保持其先前的感知运动能力不变的意义上,现有的PA算法往往是“水平的”。我们在此提出了一种同时进行“水平”和“垂直”知觉-动作学习的方法,其中还存在以分层方式逐步积累新的感知-运动能力的能力。天生的能力,并通过递归概括链接的感知域和运动域内的参数空间来逐步修改自身,从而以最大程度的紧凑方式表示环境承受能力。实验域的有效重新参数化是通过探索性消除尺寸冗余和环境来实现的。实验结果表明,与典型的无约束环境相比,该方法在计算要求上呈现出近似线性的增长,而至少是多项式增长。经典感知动作系统的要求。

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