首页> 外文期刊>Adaptive Behavior >Emotion as an emergent phenomenon of the neurocomputational energy regulation mechanism of a cognitive agent in a decision-making task
【24h】

Emotion as an emergent phenomenon of the neurocomputational energy regulation mechanism of a cognitive agent in a decision-making task

机译:情绪作为决策任务中的认知剂神经计算机能量调节机制的紧急现象

获取原文
获取原文并翻译 | 示例
           

摘要

Biological agents need to complete perception-action cycles to perform various cognitive and biological tasks such as maximizing their wellbeing and their chances of genetic continuation. However, the processes performed in these cycles come at a cost. Such costs force the agent to evaluate a tradeoff between the optimality of the decision making and the time and computational effort required to make it. Several cognitive mechanisms that play critical roles in managing this tradeoff have been identified. These mechanisms include adaptation, learning, memory, attention, and planning. One of the often overlooked outcomes of these cognitive mechanisms, in spite of the critical effect that they may have on the perception-action cycle of organisms, is "emotion." In this study, we hold that emotion can be considered as an emergent phenomenon of a plausible neurocomputational energy regulation mechanism, which generates an internal reward signal to minimize the neural energy consumption of a sequence of actions (decisions), where each action triggers a visual memory recall process. To realize an optimal action selection over a sequence of actions in a visual recalling task, we adopted a model-free reinforcement learning framework, in which the reward signal-that is, the cost-was based on the iteration steps of the convergence state of an associative memory network. The proposed mechanism has been implemented in simulation and on a robotic platform: the iCub humanoid robot. The results show that the computational energy regulation mechanism enables the agent to modulate its behavior to minimize the required neurocomputational energy in performing the visual recalling task.
机译:生物制剂需要完成感知行动周期,以执行各种认知和生物任务,例如最大化其福祉及其遗传延期的机会。然而,在这些周期中进行的过程以成本为本。此类成本迫使代理商评估决策的最优性之间的权衡以及所需的时间和计算工作。已经确定了几种在管理该权衡中发挥关键作用的认知机制。这些机制包括适应,学习,记忆,关注和规划。尽管它们可能对生物体的感知 - 动作循环可能具有“情感”,但是这些认知机制的经常被忽视的结果之一。在这项研究中,我们认为这种情绪可以被认为是合理的神经计算机能源调节机制的紧急现象,它产生内部奖励信号,以最大限度地减少一系列动作(决定)的神经能量消耗,每个动作触发视觉记忆回忆过程。为了在视觉回顾任务中实现一系列动作的最佳动作选择,我们采用了一种无模型的加强学习框架,其中奖励信号 - 即成本基于收敛状态的迭代步骤联想内存网络。拟议的机制已在模拟和机器人平台上实施:ICUB人形机器人。结果表明,计算能量调节机制使代理能够调节其行为,以最小化执行视觉回顾任务的所需的神经电机能量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号