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A comparative study of fuzzy classification methods on breast cancer data

机译:乳腺癌数据模糊分类方法的比较研究

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摘要

In this paper, we examine the performance of four fuzzy rule generation methods on Wisconsin breast cancer data. The first method generates fuzzy if-then rules using the mean and the standard deviation of attribute values with 92.2% correct classification rate. The second approach generates fuzzy if-then rules using the histogram of attributes values with 86.7% correct classification rate. The third procedure generates fuzzy if-then rules with certainty of each attribute into homogeneous fuzzy sets with 99.73% correct classification rate. In the fourth approach, only overlapping areas are partitioned with 62.57% correct classification rate. The first two approaches generate a single fuzzy if-then rule for each class by specifying the membership function of each antecedent fuzzy set using the information about attribute values of training patterns. The other two approaches are based on fuzzy grids with homogeneous fuzzy partitions of each attribute. The performance of each approach is evaluated on breast cancer data sets. Simulation results show that the simple grid approach has a high classification rate of 99.73 %.
机译:在本文中,我们检查了四种模糊规则生成方法在威斯康星州乳腺癌数据上的性能。第一种方法使用属性值的平均值和标准偏差(正确分类率为92.2%)生成模糊if-then规则。第二种方法使用属性值的直方图生成模糊的if-then规则,正确分类率为86.7%。第三个过程将确定每个属性的模糊if-then规则生成均质模糊集,正确分类率为99.73%。在第四种方法中,仅重叠区域被划分为正确分类率为62.57%。前两种方法通过使用关于训练模式的属性值的信息指定每个先前模糊集的隶属函数,为每个类别生成单个模糊if-then规则。其他两种方法基于具有每个属性均质模糊分区的模糊网格。在乳腺癌数据集上评估每种方法的性能。仿真结果表明,简单网格法的分类率高达99.73%。

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