首页> 外文期刊>Pattern recognition letters >Design of self-adaptive and equilibrium differential evolution optimized radial basis function neural network classifier for imputed database
【24h】

Design of self-adaptive and equilibrium differential evolution optimized radial basis function neural network classifier for imputed database

机译:推算数据库的自适应平衡微分进化优化径向基函数神经网络分类器设计

获取原文
获取原文并翻译 | 示例
           

摘要

The occurrence of missing values is not uncommon in real life databases like industrial, medical, and life science. The imputation of these values has been realized through the mean/mode of known values (for a quantitative/qualitative attribute) or nearest neighbors. Mean based imputation considerably underestimates the population variance and tends to weaken the attribute relationships. Similarly, the nearest neighbor approach uses only information of the nearest neighbors and leaving other observations aside. Hence to overcome the shortcomings of these methods, we have introduced a method known as medoid based imputation to impute missing values. Further, to achieve better performance, we have devised a novel classifier for imputed datasets, by using the self-adaptive control parameters of differential evolution (DE) with equilibrium of exploitation and exploration optimized radial basis function neural networks (RBFNs). By newly associating a weight parameter with target vector during mutation, we maintain equilibrium on the exploration and exploitation mechanism of DE. The self-adaptive equilibrium DE (SAEDE) is used to explore and exploit the suitable kernel parameters of RBFNs along with bias and then used for classifying unknown samples. The performance of the proposed classifier named as SAEDE-RBFN has been extensively evaluated on seven datasets retrieved from University of California, Irvine (UCI) and KEEL machine learning repositories after imputation by mean, nearest neighbor, and proposed method. The average performance of classifiers has been listed based on the imputation by K-nearest neighbor (Knn = 1, Knn = 3, Knn = 5, and Knn = 7), mean, and medoid, respectively. Outcome of the experimental study shows that the performance of SAEDE-RBFN on medoid based imputed dataset is relatively better than DE-RBFN. (C) 2016 Published by Elsevier B.V.
机译:在诸如工业,医学和生命科学等现实生活数据库中,缺失值的出现并不罕见。这些值的估算是通过已知值的均值/众数(对于定量/定性属性)或最邻近值实现的。基于均值的估算大大低估了总体方差,并趋于削弱属性关系。类似地,最近邻居方法仅使用最近邻居的信息,而忽略其他观察结果。因此,为了克服这些方法的缺点,我们引入了一种称为“基于medoid的插补”方法来插补缺失值。此外,为了获得更好的性能,我们通过使用具有演化平衡的差分演化(DE)的自适应控制参数和探索优化的径向基函数神经网络(RBFN),为推算数据集设计了一种新颖的分类器。通过在突变过程中将权重参数与目标向量重新关联,我们在DE的探索和开发机制上保持了平衡。自适应平衡DE(SAEDE)用于探索和利用RBFN的合适核心参数以及偏差,然后用于对未知样本进行分类。在通过均值,最近邻和拟议的方法进行插补后,从加州大学欧文分校(UCI)和KEEL机器学习存储库中检索到的七个数据集广泛评估了拟议分类器SAEDE-RBFN的性能。分类器的平均性能已根据最接近K的邻居(Knn = 1,Knn = 3,Knn = 5,Knn = 7),均值和medoid的插值列出。实验研究的结果表明,SAEDE-RBFN在基于medoid的估算数据集上的性能相对优于DE-RBFN。 (C)2016由Elsevier B.V.发布

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号