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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >A classification method using a hybrid genetic algorithm combined with an adaptive procedure for the pool of ellipsoids
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A classification method using a hybrid genetic algorithm combined with an adaptive procedure for the pool of ellipsoids

机译:使用混合遗传算法结合自适应过程的椭球池分类方法

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摘要

This paper presents a hybrid classification method that utilizes genetic algorithms (GAs) and adaptive operations of ellipsoidal regions for multidimensional pattern classification problems with continuous features. The classification method fits a finite number of the ellipsoidal regions to data pattern by using hybrid GAs, the combination of local improvement procedures and GAs. The local improvement method adaptively expands, rotates, shrinks, and/or moves the ellipsoids while each ellipsoid is separately handled with a fitness value assigned during the GA operations. A set of significant features for the ellipsoids are automatically determined in the hybrid GA procedure by introducing "don't care" bits to encode the chromosomes. The performance of the method is evaluated on well-known data sets and a real field classification problem originated from a deflection yoke production line. The evaluation results show that the proposed method can exert superior performance to other classification methods such as k nearest neighbor, decision trees, or neural networks.
机译:本文提出了一种混合分类方法,该方法利用遗传算法和椭圆区域的自适应运算来解决具有连续特征的多维模式分类问题。通过使用混合GA,局部改进程序和GA的组合,分类方法将有限数量的椭圆形区域拟合到数据模式。局部改进方法自适应地扩展,旋转,收缩和/或移动椭球,同时在GA运算过程中使用分配的适应性值分别处理每个椭球。通过引入“无关”位对染色体进行编码,在混合GA程序中自动确定了一组椭球的重要特征。该方法的性能在众所周知的数据集上进行评估,而实际的分类问题则来自偏转线圈生产线。评估结果表明,与k分类的最近邻,决策树或神经网络等分类方法相比,该方法具有更好的性能。

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