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Multiclass classification based on binary classifiers: On coding matrix design, reliability and maximum number of classes

机译:基于二进制分类器的多类分类:关于编码矩阵设计,可靠性和最大类数

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In this paper, we consider the multiclass classification problem based on independent set of binary classifiers. Each binary classifier represents the output of quantized projection of training data onto a randomly generated orthonormal basis vector thus producing a binary label. The ensemble of all binary labels forms an analogue of a coding matrix. The properties of such kind of matrices and their impact on the maximum number of uniquely distinguishable classes are analyzed in this paper from an information-theoretic point of view. We also consider a concept of reliability for such kind of coding matrix generation that can be an alternative way for other adaptive training techniques and investigate the impact on the bit error probability. We demonstrate that it is equivalent to the considered random coding matrix without any bit reliability information in terms of recognition rate.
机译:在本文中,我们考虑基于独立的二进制分类器集的多类分类问题。每个二元分类器代表训练数据在随机生成的正交基向量上的量化投影的输出,从而产生二元标签。所有二进制标签的集合形成编码矩阵的类似物。本文从信息论的角度分析了这类矩阵的性质及其对最大数目的唯一可区分类的影响。我们还考虑了这种编码矩阵生成的可靠性概念,该概念可以作为其他自适应训练技术的替代方法,并研究对误码率的影响。我们证明,它等同于考虑的随机编码矩阵,在识别率方面没有任何位可靠性信息。

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