Spatio-temporal Map Formation based on a Potential Function

Prayag Gowgi, S. G. Srinivasa
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引用次数: 3

Abstract

We revisit the problem of temporal self organization using activity diffusion based on the neural gas (NGAS) algorithm. Using a potential function formulation motivated by a spatio-temporal metric, we derive an adaptation rule for dynamic vector quantization of data. Simulations results show that our algorithm learns the input distribution and time correlation much faster compared to the static neural gas method over the same data sequence under similar training conditions.
基于势函数的时空地图生成
我们重新研究了基于神经气体(NGAS)算法的活动扩散的时间自组织问题。利用时空度量驱动的势函数公式,推导了数据动态矢量量化的自适应规则。仿真结果表明,在相似的训练条件下,在相同的数据序列上,我们的算法学习输入分布和时间相关性的速度比静态神经气体方法快得多。
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