Dynamic shift mechanism of continuous attractors in a class of recurrent neural networks

Haixian Zhang, Zhang Yi
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引用次数: 1

Abstract

Continuous attractors of recurrent neural networks (RNNs) have attracted extensive interests in recent years. It is often used to describe the encoding of continuous stimuli such as orientation, moving direction and spatial location of objects. This paper studies the dynamic shift mechanism of a class of continuous attractor neural networks. It shows that if the external input is a gaussian shape with its center varying along with time, by adding a slight shift to the weights, the symmetry of gaussian weight function is destroyed. Then, the activity profile will shift continuously without changing its shape, and the shift speed can be controlled accurately by a given constant. Simulations are employed to illustrate the theory.
一类递归神经网络中连续吸引子的动态移位机制
递归神经网络(rnn)的连续吸引子近年来引起了广泛的关注。它通常用于描述物体的方向、运动方向和空间位置等连续刺激的编码。研究了一类连续吸引子神经网络的动态移位机制。结果表明,如果外部输入是中心随时间变化的高斯形状,通过对权值进行轻微的偏移,可以破坏高斯权值函数的对称性。然后,活动剖面将在不改变其形状的情况下连续移动,并且可以通过给定常数精确控制移动速度。仿真是用来说明理论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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