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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Temporal Self-Organization: A Reaction–Diffusion Framework for Spatiotemporal Memories
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Temporal Self-Organization: A Reaction–Diffusion Framework for Spatiotemporal Memories

机译:时间自组织:时空记忆的反应扩散框架

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摘要

Self-organizing maps (SOMs) find numerous applications in learning, clustering, and recalling spatial input patterns. The traditional approach in learning spatiotemporal patterns is to incorporate time on the output space of a SOM along with heuristic update rules that work well in practice. Inspired by the pioneering work of Alan Turing, who used reaction-diffusion equations to explain spatial pattern formation, we develop an analogous theoretical model for a spatiotemporal memory to learn and recall temporal patterns. The contribution of the paper is threefold: 1) using coupled reaction-diffusion equations, we develop a theory from first principles for constructing a spatiotemporal SOM and derive an update rule for learning based on the gradient of a potential function; 2) we analyze the dynamics of our algorithm and derive conditions for optimally setting the model parameters; and 3) we mathematically quantify the temporal plasticity effect observed during recall in response to the input dynamics. The simulation results show that the proposed algorithm outperforms the SOM with temporal activity diffusion, neural gas with temporal activity diffusion and spatiotemporal map formation based on a potential function in the presence of correlated noise for the same data set and similar training conditions.
机译:自组织地图(SOM)在学习,聚类和调出空间输入模式中找到了许多应用。学习时空模式的传统方法是将SOM输出空间中的时间与在实践中运行良好的启发式更新规则结合在一起。受艾伦·图灵(Alan Turing)的开创性工作的启发,他使用反应扩散方程来解释空间模式的形成,我们为时空记忆开发了一个类似的理论模型,以学习和回忆时间模式。本文的贡献是三方面的:1)使用耦合反应扩散方程,我们从构造时空SOM的第一原理中发展了一种理论,并基于势函数的梯度导出了用于学习的更新规则。 2)我们分析算法的动力学特性,并得出优化设置模型参数的条件;和3)我们根据输入动态数学地量化召回期间观察到的时间可塑性效应。仿真结果表明,在相同数据集和相似训练条件下,在存在相关噪声的情况下,基于潜在函数,该算法优于具有时间活动扩散的SOM,具有时间活动扩散的神经气体和时空图形成。

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