Evolving Dendritic Neuron Model by Equilibrium Optimizer Algorithm

Chunzhi Hou, Jiarui Shi, Baohang Zhang
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引用次数: 3

Abstract

In recent years, the role of a single dendritic neural structures with non-linear localisation in computing has attracted a lot of attention from the industry. The dendritic neuron model (DNM) is an approximate logical neuron model based on dendrites, with branches of dendrites corresponding to three distributions in coordinates.The model is trained to assort data as needed by mimicking the mechanisms of transmitting information and biological nerves. Traditionally DNM models use error back propagation (BP) to optimise local minimum problems, but also degrade their performance. We now train it using an equilibrium optimizer based on physical phenomena inspired by control volume mass balance. Experimental results due to some real-world classification problems show that the mentioned algorithm can improve the accuracy of the DNM solution.
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基于均衡优化算法的树突神经元进化模型
近年来,具有非线性定位的单个树突神经结构在计算中的作用引起了业界的广泛关注。树突神经元模型(DNM)是一种基于树突的近似逻辑神经元模型,树突的分支在坐标上对应三个分布。通过模拟信息传递和生物神经的机制,训练该模型根据需要对数据进行分类。传统的DNM模型使用误差反向传播(BP)来优化局部最小问题,但也降低了模型的性能。我们现在使用一个平衡优化器来训练它,这个平衡优化器是基于受控制体积质量平衡启发的物理现象。针对一些实际分类问题的实验结果表明,该算法可以提高DNM解的精度。
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