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Classification of incomplete data based on belief functions and K-nearest neighbors

机译:基于信念函数和K近邻的不完整数据分类

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摘要

It can be quite difficult to correctly and precisely classify the incomplete data with missing values, since the missing information usually causes ambiguities (uncertainty) in the classification result. Belief function theory can well model such uncertain and imprecise information, and a new belief-based method for credal classification of incomplete data (CCI) is proposed using the K nearest neighbors (KNNs) strategy. In CCI, the KNNs of object (incomplete data) are respectively used to estimate the missing values, and one can obtain K versions of edited pattern with estimated values from the KNNs. The K edited patterns are classified by any classical method to get K pieces of classification results with different discounting (weighting) factors depending on the distances between the object and its KNNs, and global fusion of the K classification results represented by the basic belief assignments (bba's) is used for credal classification of the object. The conflicting beliefs produced in the fusion process can well capture the imprecision degree of classification, and it will be transferred to the selected meta-class defined by the disjunction of several classes (i.e. the set of several classes) according to the current context. Thus, the incomplete data that is hard to correctly classify because of the missing values will be reasonably committed to proper meta-class, which is able to characterize the imprecision of classification and reduce the errors as well. Three experiments are given to illustrate the potential and interest of CCI approach. (C) 2015 Elsevier B.V. All rights reserved.
机译:由于缺失的信息通常会导致分类结果中的歧义(不确定性),因此很难正确准确地对具有缺失值的不完整数据进行分类。信度函数理论可以很好地对这类不确定和不精确的信息进行建模,并提出了一种使用K最近邻(KNN)策略对不完整数据(CCI)进行信度分类的新方法。在CCI中,对象(不完整数据)的KNN分别用于估计缺失值,并且可以从KNN中获得带有估计值的K个版本的编辑模式。通过任何经典方法对K个编辑的模式进行分类,以获取K个分类结果,这些分类结果取决于对象与其KNN之间的距离而具有不同的折现(加权)因子,并且以基本信念分配表示的K个分类结果为全局融合( bba's用于对象的credal分类。融合过程中产生的冲突信念可以很好地捕获分类的不精确度,并且将根据当前上下文将其转移到由多个类别(即,多个类别的集合)的析取定义的选定元类别。因此,由于缺少值而导致难以正确分类的不完整数据将被合理地分配给适当的元类,从而能够表征分类的不精确性并减少错误。给出了三个实验来说明CCI方法的潜力和兴趣。 (C)2015 Elsevier B.V.保留所有权利。

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