A Hybrid ACOR Algorithm for Pattern Classification Neural Network Training

Zhangming Zhao, Jing Feng, Kunpeng Jing, En Shi
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引用次数: 4

Abstract

The ACOR algorithm is an Ant Colony Optimization (ACO) extended to continuous domains, and has been used for training neural network. However, when training neural networks, ACOR does not allow for heuristic information like most conventional ACO algorithms do. So in this work we propose a hybrid ACOR algorithm, named h-ACOR, which incorporates the heuristic information into the framework of ACOR for neural network training. The heuristic information in h-ACOR is a gradient vector obtained by computing the partial derivative of error term of the neural network with respect to weight vector. The h-ACOR is tested on training neural networks for pattern classification problems with UCI datasets: zoo, iris and tic-tac-toe. The experiments were carried out using 10-fold cross-validation method, and the results show that: h-ACOR has better performance than ACOR with almost half of convergence generations; and after completely training by h-ACOR, the average classification accuracy of datasets zoo, iris and tic-tac-toe is 92.6% while that of ACOR is 86.6%.
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模式分类神经网络训练的混合ACOR算法
ACOR算法是一种扩展到连续域的蚁群算法,已被用于神经网络的训练。然而,在训练神经网络时,ACOR不像大多数传统的蚁群算法那样允许启发式信息。因此,本文提出了一种混合ACOR算法h-ACOR,该算法将启发式信息整合到ACOR框架中,用于神经网络的训练。h-ACOR中的启发式信息是通过计算神经网络误差项对权重向量的偏导数得到的梯度向量。h-ACOR在训练神经网络上测试了UCI数据集的模式分类问题:动物园、虹膜和井字棋。采用10倍交叉验证方法进行实验,结果表明:h-ACOR算法的收敛次数几乎减少了一半,性能优于ACOR算法;经过h-ACOR完全训练后,zoo、iris和tic-tac-toe数据集的平均分类准确率为92.6%,而ACOR的平均分类准确率为86.6%。
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