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Self-Organizing Sensorimotor Maps Plus Internal Motivations Yield Animal-Like Behavior

机译:自组织感觉运动图加上内部动机产生类似动物的行为

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This article investigates how a motivational module can drive an animat to learn a sensorimotor cognitive map and use it to generate flexible goal-directed behavior. Inspired by the rat's hippocampus and neighboring areas, the time growing neural gas (TGNG) algorithm is used, which iteratively builds such a map by means of temporal Hebbian learning. The algorithm is combined with a motivation module, which activates goals, priorities, and consequent activity gradients in the developing cognitive map for the self-motivated control of behavior. The resulting motivated TGNG thus combines a neural cognitive map learning process with top-down, self-motivated, anticipatory behavior control mechanisms. While the algorithms involved are kept rather simple, motivated TGNG displays several emergent behavioral patterns, self-sustainment, and reliable latent learning. We conclude that motivated TGNG constitutes a solid basis for future studies on self-motivated cognitive map learning, on the design of further enhanced systems with additional cognitive modules, and on the realization of highly adaptive, interactive, goal-directed, cognitive systems.
机译:本文研究了动机模块如何驱动动画来学习感觉运动认知图并使用它来生成灵活的目标定向行为。受大鼠海马及附近区域的启发,使用了时间增长神经气体(TGNG)算法,该算法通过时空Hebbian学习迭代地构建了这种地图。该算法与动机模块结合,可以激活目标,优先级和随之而来的活动梯度,从而促进正在发展的认知图中进行行为的自我控制。因此,产生的有动机的TGNG将神经认知图学习过程与自上而下的,有自我动机的预期行为控制机制结合在一起。尽管所涉及的算法保持相当简单,但有动机的TGNG会显示几种新出现的行为模式,自我维持和可靠的潜在学习。我们得出结论,有动机的TGNG构成了未来有关自我动机的认知图学习,进一步设计具有附加认知模块的增强系统以及实现高度自适应,交互式,目标导向的认知系统的坚实基础。

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