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Combining Classifiers through Triplet-Based Belief Functions

机译:通过基于三联的信仰功能组合分类器

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Classifier outputs in the form of continuous values have often been combined using linear sum or stacking, but little is generally known about evidential reasoning methods for combining truncated lists of ordered decisions. In this paper we introduce a novel class-indifferent method for combining such a kind of classifier decisions. Specifically we model each output given by classifiers on new instances as a list of ranked decisions that is divided into 2 subsets of decisions, which are represented by triplet-based belief functions and then are combined using Dempster's rule of combination. We present a formalism for triplet-based belief functions and establish a range of general formulae for combining these beliefs in order to arrive at a consensus decision. In addition we carry out a comparative analysis with an alternative representation dichotomous belief functions on the UCI benchmark data. We also compare our combination method with the popular methods of stacking, boosting, linear sum and majority voting over the same benchmark data to demonstrate the advantage of our approach.
机译:分类器以连续值的形式输出通常使用线性和堆叠组合,但是对于组合截断的有序决策的截断列表的证据推理方法普遍已知几乎没有。在本文中,我们介绍了一种组合这种分类器决策的新型类漠不关心的方法。具体地,我们将分类器上的分类器给出的每个输出模拟新实例作为排名决策列表,该决定被分为2个决策子集,这些决策子集是由基于三态的信仰函数表示的,然后使用Dempster的组合规则组合。我们为三联网的信仰职能提出了一种形式主义,并建立一系列一般公式,以结合这些信念,以便达成共识决定。此外,我们对UCI基准数据进行了对比较分析,具有替代表示二分法信仰功能。我们还将我们的组合方法与流行的堆叠,提升,线性和和大多数投票进行了比较了相同的基准数据,以展示我们方法的优势。

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