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Executive attention, action selection and attention-based learning in neurally controlled autonomous agents

机译:神经控制自主代理中的执行注意力,动作选择和基于注意力的学习

摘要

I describe the design and implementation of an integrated neural architecture, modelled on human executive attention, which is used to control both automatic (reactive) and willed action selection in a simulated robot. The model, based upon Norman and Shallice's supervisory attention system, incorporates important features of human attentional control: selection of an intended task over a more salient automatic task; priming of future tasks that are anticipated; and appropriate levels of persistence of focus of attention. Recognising that attention-based learning, mediated by the limbic system, and the hippocampus in particular, plays an important role in adaptive learning, I extend the Norman and Shallice model, introducing an intrinsic, attention-based learning mechanism that enhances the automaticity of willed actions and reduces future need for attentional effort required for dealing with distractions. These enhanced features support a new level of attentional autonomy in the operation of the simulated robot. Some properties of the model are explored using lesion studies, leading to the identification of a correspondence between the behavioural pathologies of the simulated robot and those seen in human patients suffering dysfunction of executive attention.
机译:我描述了基于人类执行人员注意力建模的集成神经体系结构的设计和实现,该体系结构用于控制模拟机器人中的自动(反应性)和自愿行为选择。该模型基于Norman和Shallice的监督注意系统,结合了人类注意控制的重要功能:选择目标任务而不是更突出的自动任务;启动预期的未来任务;和适当程度的持续性关注焦点。认识到由边缘系统尤其是海马介导的基于注意力的学习在适应性学习中起着重要作用,我扩展了Norman和Shallice模型,引入了一种内在的,基于注意力的学习机制,该机制增强了自愿者的自动化程度。采取行动,减少将来需要处理注意力的注意力。这些增强的功能在模拟机器人的操作中将注意力自治提高到了一个新的水平。使用病灶研究探索了模型的某些属性,从而确定了模拟机器人的行为病理与在患有执行注意力障碍的人类患者中看到的行为病理之间的对应关系。

著录项

  • 作者

    Garforth Jason P;

  • 作者单位
  • 年度 2006
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

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