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Classification of incomplete patterns based on the fusion of belief functions

机译:基于信念函数融合的不完整模式分类

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The influence of the missing values in the classification of incomplete pattern mainly depends on the context. In this paper, we present a fast classification method for incomplete pattern based on the fusion of belief functions where the missing values are selectively (adaptively) estimated. At first, it is assumed that the missing information is not crucial for the classification, and the object (incomplete pattern) is classified based only on the available attribute values. However, if the object cannot be clearly classified, it implies that the missing values play an important role to obtain an accurate classification. In this case, the missing values will be imputed based on the K-nearest neighbor (K-NN) and self-organizing map (SOM) techniques, and the edited pattern with the imputation is then classified. The (original or edited) pattern is respectively classified according to each training class, and the classification results represented by basic belief assignments (BBA's) are fused with proper combination rules for making the credal classification. The object is allowed to belong with different masses of belief to the specific classes and meta-classes (i.e. disjunctions of several single classes). This credal classification captures well the uncertainty and imprecision of classification, and reduces effectively the rate of misclassifications thanks to the introduction of meta-classes. The effectiveness of the proposed method with respect to other classical methods is demonstrated based on several experiments using artificial and real data sets.
机译:缺失值对不完整模式分类的影响主要取决于上下文。在本文中,我们提出了一种基于不完全模式的快速分类方法,该方法基于信念函数的融合,其中缺失值是有选择地(自适应)估计的。首先,假定丢失的信息对于分类不是至关重要的,并且仅基于可用的属性值对对象(不完整的模式)进行分类。但是,如果无法对对象进行清晰的分类,则意味着缺少的值对于获得准确的分类起着重要的作用。在这种情况下,将基于K最近邻(K-NN)和自组织映射(SOM)技术来估算缺失值,然后对带有插补的已编辑模式进行分类。根据每个训练类别分别对(原始或编辑的)模式进行分类,并将由基本信念分配(BBA)表示的分类结果与适当的组合规则融合,以进行分批分类。允许该对象以不同的信念归属于特定的类和元类(即,几个单个类的析取)。这种credal分类法很好地捕获了分类法的不确定性和不精确性,并且由于引入了元分类法,有效地降低了分类错误率。基于使用人工和真实数据集的几次实验,证明了该方法相对于其他经典方法的有效性。

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