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Possibilistic Classifiers for Uncertain Numerical Data

机译:不确定数值数据的可能分类器

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In many real-world problems, input data may be pervaded with uncertainty. Naive possibilistic classifiers have been proposed as a counterpart to Bayesian classifiers to deal with classification tasks in presence of uncertainty. Following this line here, we extend possibilistic classifiers, which have been recently adapted to numerical data, in order to cope with uncertainty in data representation. We consider two types of uncertainty: i) the uncertainty associated with the class in the training set, which is modeled by a possibility distribution over class labels, and ii) the imprecision pervading attribute values in the testing set represented under the form of intervals for continuous data. We first adapt the possibilistic classification model, previously proposed for the certain case, in order to accommodate the uncertainty about class labels. Then, we propose an extension principle-based algorithm to deal with imprecise attribute values. The experiments reported show the interest of possibilistic classifiers for handling uncertainty in data. In particular, the probability-to-possibility transform-based classifier shows a robust behavior when dealing with imperfect data.
机译:在许多实际问题中,输入数据可能充满不确定性。已经提出朴素的可能性分类器作为贝叶斯分类器的对应物,以在存在不确定性的情况下处理分类任务。在此之后,我们扩展了可能的分类器,这些分类器最近已适应于数值数据,以应对数据表示中的不确定性。我们考虑两种类型的不确定性:i)与训练集中的班级相关的不确定性,该不确定性通过在班级标签上的可能性分布来建模,并且ii)测试集中不精确的属性值以区间形式表示连续数据。我们首先调整先前针对特定情况提出的可能性分类模型,以适应类别标签的不确定性。然后,我们提出了一种基于扩展原理的算法来处理不精确的属性值。报告的实验表明,可能分类器对于处理数据的不确定性很感兴趣。尤其是,基于概率到可能性变换的分类器在处理不完善的数据时表现出强大的行为。

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