前馈神经网络训练的系统轨迹搜索算法

L. Tseng, Wen-Ching Chen
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引用次数: 4

摘要

本文提出了系统轨迹搜索算法(STSA)来训练前馈神经网络的连接权值。该算法利用正交阵列(OA)统一生成初始种群,实现对解空间的全局探索,然后采用一种新的轨迹搜索方法,对有潜力的区域进行彻底的挖掘。通过训练一类前馈神经网络来解决来自UCI机器学习存储库的两个医疗数据集的n位奇偶校验问题和分类问题,评估了所提出的STSA的性能。通过与前人的研究对比,实验结果表明,STSA训练的神经网络具有很好的分类能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Systematic Trajectory Search Algorithm for Feedforward Neural Network Training
In this work, the systematic trajectory search algorithm (STSA) is proposed to train the connection weights of the feedforward neural networks. The STSA utilizes the orthogonal array (OA) to uniformly generate the initial population in order to globally explore the solution space, then it applies a novel trajectory search method that can exploit the promising area thoroughly. The performance of the proposed STSA is evaluated by applying it to train a class of feedforward neural networks to solve the n-bit parity problem and the classification problem on two medical datasets from the UCI machine learning repository. By comparing with the previous studies, the experimental results revealed that the neural networks trained by the STSA have very good classification ability.
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