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A Decision Method of Attribute Importance for Classification by Outlier Detection

机译:基于离群点检测的属性重要性分类决策方法

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Our aim is to group data objects, to which the same class labels could be assigned, using a clustering method for high dimensional data sets. In order to group data objects by clustering, we compute the degree of the influence of each attribute for class labels. To find important attributes having large influence on class labels, we use the feature extraction method which we have developed. We can construct a set of data objects which have single class labels with high accuracy by finding sensitive attributes for the class label. Next, we group data objects which have unique class labels by clustering methods. From experimental simulation, we show the effectiveness of the important attribute detection by performing clustering of transformed benchmark data sets as two class classification problems.
机译:我们的目标是使用高维数据集的聚类方法对可以分配相同类别标签的数据对象进行分组。为了通过聚类对数据对象进行分组,我们计算了每个属性对类标签的影响程度。为了找到对类别标签有很大影响的重要属性,我们使用了已经开发的特征提取方法。通过为类标签查找敏感属性,我们可以构建一组具有单个类标签的数据对象,并具有较高的准确性。接下来,我们通过聚类方法对具有唯一类标签的数据对象进行分组。从实验仿真中,我们通过对转换后的基准数据集进行聚类作为两个类别的分类问题,展示了重要属性检测的有效性。

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