Global, local and embedded architectures for multiclass classification with foreign elements rejection: An overview

W. Homenda, A. Jastrzębska
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引用次数: 4

Abstract

In the paper we look closely at the issue of contaminated data sets, where apart from proper elements we may have garbage. In a typical scenario, further classification of such data sets is always negatively influenced by garbage elements. Ideally, we would like to remove them from the data set entirely. Garbage elements are called here foreign elements and the task of removing them from the data set is called rejection of foreign elements. The paper is devoted to comparison and analysis of three different models capable to perform classification with rejection of foreign elements. It shall be emphasized that all studied methods are based only on proper patterns and no knowledge about foreign elements is needed to construct them. Hence, the methods we study are truly general and could be applied in many ways and in many problems. The following classification/rejection architectures are considered: global, local, and embedded. We analyze their performance in two aspects: influence of rejection mechanisms on classification and the quality of rejection. Issues are addressed theoretically and empirically in a study of handwritten digits recognition. Results show that the local architecture and the embedded architecture are advantageous, in comparison to the global architecture.
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排除外来元素的多类分类的全局、局部和嵌入式体系结构综述
在本文中,我们仔细研究了污染数据集的问题,除了适当的元素,我们可能有垃圾。在典型的场景中,对这些数据集的进一步分类总是受到垃圾元素的负面影响。理想情况下,我们希望完全从数据集中删除它们。垃圾元素在这里称为外部元素,从数据集中删除它们的任务称为拒绝外部元素。本文对三种不同的模型进行了比较和分析,这些模型能够进行排除外来元素的分类。需要强调的是,所有研究的方法都是基于适当的模式,不需要对外来元素的知识来构建它们。因此,我们研究的方法是真正通用的,可以应用于许多方面和许多问题。考虑以下分类/拒绝架构:全局、本地和嵌入式。我们从拒绝机制对分类的影响和拒绝质量两个方面分析了它们的表现。在手写体数字识别的研究中,从理论上和经验上解决了问题。结果表明,与全局架构相比,局部架构和嵌入式架构具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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