模式识别与分类的智能混合系统

I. Jordanov, A. Georgieva
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引用次数: 0

摘要

在这项研究中,我们批判性地分析和比较了几种全局优化(GO)方法与我们的混合GLPτS方法的性能,该方法在寻找全局解的最后阶段使用元启发式规则和局部搜索。我们还批判性地研究了随机遗传算法(StGA)方法,以证明其算法和假设存在一些漏洞。随后,当我们的智能系统用于解决现实世界的模式识别和分类问题时,我们将GLPτS方法用于神经网络(NN)监督学习。在预处理数据阶段,我们的系统还使用主成分分析(PCA)和线性判别分析(LDA)来降维和最小化分类问题所选择的特征数量。最后,将报告的结果与反向传播(BP)进行比较,以证明我们系统的竞争特性和效率。
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Intelligent hybrid system for pattern recognition and classification
In this study, we critically analyse and compare performances of several global optimization (GO) approaches with our hybrid GLPτS method, which uses meta-heuristic rules and a local search in the final stage of finding a global solution. We also critically investigate a Stochastic Genetic Algorithm (StGA) method to demonstrate that there are some loopholes in its algorithm and assumptions. Subsequently, we employ the GLPτS method for neural network (NN) supervised learning, when using our intelligent system for solving real-world pattern recognition and classification problem. In the preprocessing data phase, our system also uses Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) for dimensionality reduction and minimization of the chosen number of features for the classification problem. Finally, the reported results are compared with Backpropagation (BP) to demonstrate the competitive properties and the efficiency of our system.
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