ConfusionTree-Pattern: A Hierarchical Design for an Efficient and Performant Multi-Class Pattern

M. F. Adesso, Nicola Wolpert, E. Schömer
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Abstract

Developing neural networks for supervised multi-class classification has become important for theory and practice. An essential point is the design of the underlying network. Beside single-network approaches there are several multi-class patterns which decompose a classification problem into multiple sub-problems and derive systems of neural networks. We show that existing multi-class patterns can be improved by a new and simple labeling scheme for the training of the sub-problems. We efficiently derive a class hierarchy which is optimized for our labeling scheme and, unlike most of existing works, has no schematic restrictions. Based on that we introduce a hierarchical multi-class pattern, called ConfusionTree-pattern, which is able to reach high classification accuracies. Our experiments show that our multi-class ConfusionTree-pattern reaches state-of-the-art results regarding performance and efficiency.
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混淆树模式:一种高效、高性能的多类模式的分层设计
开发神经网络进行有监督多类分类已经成为一个重要的理论和实践问题。最重要的一点是底层网络的设计。除了单网络方法外,还有几种多类模式,它们将分类问题分解为多个子问题并派生出神经网络系统。我们证明了现有的多类模式可以通过一种新的简单的标记方案来改进子问题的训练。我们有效地推导了一个针对我们的标记方案进行了优化的类层次结构,并且与大多数现有作品不同,它没有原理图限制。在此基础上,我们引入了一种分层的多类模式,称为confusiontree模式,该模式能够达到较高的分类精度。我们的实验表明,我们的多类confusiontree模式在性能和效率方面达到了最先进的结果。
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