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引用次数: 0

摘要

本文提出了一种自组织映射算法的变体,将原始的时变(学习率和邻域)学习函数替换为时不变的学习函数。由此产生的自组织不符合放大定律,最终矢量密度与分布密度不成正比。这导致我们引入了激励自组织的概念,其中自组织由于补充信号而偏向于某些数据。从行为的角度来看,这个信号可以被理解为一种动机信号,允许在需要的地方对最终的自组织进行更精细的调整。我们通过一个简单的机械臂设置来说明这种行为。本文的开放获取版本可在https://hal.inria.fr/hal-01513519上获得。
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Motivated self-organization
We present in this paper a variation of the self-organizing map algorithm where the original time-dependent (learning rate and neighborhood) learning function is replaced by a time-invariant one. The resulting self-organization does not fit the magnification law and the final vector density is not directly proportional to the density of the distribution. This lead us to introduce the notion of motivated self-organization where the self-organization is biased toward some data thanks to a supplementary signal. From a behavioral point of view, this signal may be understood as a motivational signal allowing a finer tuning of the final self-organization where needed. We illustrate this behavior through a simple robotic arm setup. Open access version of this article is available at https://hal.inria.fr/hal-01513519.
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