首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >Training Feed-Forward Multi-Layer Perceptron Artificial Neural Networks with a Tree-Seed Algorithm
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Training Feed-Forward Multi-Layer Perceptron Artificial Neural Networks with a Tree-Seed Algorithm

机译:用树木算法训练前馈多层的人工神经网络

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摘要

The artificial neural network (ANN) is the most popular research area in neural computing. A multi-layer perceptron (MLP) is an ANN that has hidden layers. Feed-forward (FF) ANN is used for classification and regression commonly. Training of FF MLP ANN is performed by backpropagation (BP) algorithm generally. The main disadvantage of BP is trapping into local minima. Nature-inspired optimizers have some mechanisms escaping from the local minima. Tree-seed algorithm (TSA) is an effective population-based swarm intelligence algorithm. TSA mimics the relationship between trees and their seeds. The exploration and exploitation are controlled by search tendency which is a peculiar parameter of TSA. In this work, we train FF MLP ANN for the first time. TSA is compared with particle swarm optimization, gray wolf optimizer, genetic algorithm, ant colony optimization, evolution strategy, population-based incremental learning, artificial bee colony, and biogeography-based optimization. The experimental results show that TSA is the best in terms of mean classification rates and outperformed the opponents on 18 problems.
机译:人工神经网络(ANN)是神经计算中最受欢迎的研究区域。多层的Perceptron(MLP)是具有隐藏层的ANN。前馈(FF)ANN通常用于分类和回归。 FF MLP ANN的训练通常由BackPropagation(BP)算法进行。 BP的主要缺点是捕获局部最小值。自然灵感的优化器有一些机制逃离了当地最小值。树种算法(TSA)是一种有效的基于人群的群体智能算法。 TSA模仿树木和种子之间的关系。通过搜索趋势来控制勘探和剥削,这是TSA的特殊参数。在这项工作中,我们首次培训FF MLP ANN。将TSA与粒子群优化,灰狼优化,遗传算法,蚁群优化,演进策略,基于人口的增量学习,人造群体和基于生物地理的优化进行比较。实验结果表明,在平均分类率方面是最好的,在18个问题上表现出对手的最佳。

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