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A New Belief-based Classification Fusion for Incomplete Data

机译:一种新的基于信念的不完整数据分类融合

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Reducing the negative impact of estimation on classifier performance in training set is one of the most challenging tasks in incomplete data classification. A new belief-based classification fusion method (BCF) is proposed for incomplete data in this paper and the core idea is to make full use of the existing attributes of incomplete objects in training set to improve the performance of basic classifier without deleting or estimation strategy. Specifically, for a data set with n-dimensional attributes, different attributes generate p (p ≤ n) subsets according to prior knowledge or random combination. Then, $p$ trained basic classifiers (such as SVM) will be obtained with complete objects from corresponding $p$ training subsets, and estimation strategy is used to fill the incomplete objects in the test set. Finally, DS rule is used to fuse $p$ sub-classification results if they do not conflict and a new global fusion method is proposed to fuse the remaining conflict sub-classification results, which can submit the object difficult to be accurately classified into a singleton (special) class to meta-class to reduce error rate and characterize the uncertainly caused by missing values well. Our simulation results illustrate the potential of the proposed method using real data sets, and they show that BCF can improve substantially the classification accuracy.
机译:减少估计对训练集中分类器性能的负面影响是不完整数据分类中最具挑战性的任务之一。提出了一种针对不完备数据的基于信念的分类融合方法(BCF),其核心思想是在训练集中充分利用不完备对象的现有属性来提高基本分类器的性能,而无需删除或估计策略。 。具体来说,对于具有n维属性的数据集,不同的属性会根据先验知识或随机组合生成p(p≤n)个子集。然后, $ p $ 训练有素的基本分类器(例如SVM)将与来自相应对象的完整对象一起获得 $ p $ 训练子集,并使用估计策略填充测试集中的不完整对象。最后,DS规则用于融合 $ p $ 不冲突的子分类结果,并提出了一种新的全局融合方法来融合剩余的冲突子分类结果,该方法可以将难以准确分类的对象提交给单类(特殊)类以进行元类减少错误率,并很好地描述了缺失值所引起的不确定性。我们的仿真结果说明了使用实际数据集提出的方法的潜力,并且它们表明BCF可以大大提高分类精度。

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