Category Trees - Classifiers that Branch on Category

Kieran R. C. Greer
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Abstract

This paper presents a batch classifier that splits a dataset into tree branches depending on the category type. It has been improved from the earlier version and fixed a mistake in the earlier paper. Two important changes have been made. The first is to represent each category with a separate classifier. Each classifier then classifies its own subset of data rows, using batch input values to create the centroid and also represent the category itself. If the classifier contains data from more than one category however, it needs to create new classifiers for the incorrect data. The second change therefore is to allow the classifier to branch to new layers when there is a split in the data, and create new classifiers there for the data rows that are incorrectly classified. Each layer can therefore branch like a tree - not for distinguishing features, but for distinguishing categories. The paper then suggests a further innovation, which is to represent some data columns with fixed value ranges, or bands. When considering features, it is shown that some of the data can be classified directly through fixed value ranges, while the rest must be classified using a classifier technique and the idea allows the paper to discuss a biological analogy with neurons and neuron links. Tests show that the method can successfully classify a diverse set of benchmark datasets to better than the state-of-the-art.
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类别树-在类别上分支的分类器
本文提出了一种批分类器,该分类器根据类别类型将数据集拆分为树枝。它在早期版本的基础上进行了改进,并修复了早期论文中的一个错误。已经做出了两个重要的改变。第一种是用一个单独的分类器来表示每个类别。然后,每个分类器对自己的数据行子集进行分类,使用批输入值来创建质心,并表示类别本身。但是,如果分类器包含来自多个类别的数据,则需要为不正确的数据创建新的分类器。因此,第二个变化是允许分类器在数据中存在拆分时分支到新的层,并在那里为分类错误的数据行创建新的分类器。因此,每一层都可以像树一样分支——不是为了区分特征,而是为了区分类别。然后,本文提出了进一步的创新,即用固定值范围或带来表示一些数据列。在考虑特征时,研究表明,一些数据可以直接通过固定值范围进行分类,而其余数据必须使用分类器技术进行分类,这一想法使本文能够讨论神经元和神经元链接的生物学类比。测试表明,该方法可以成功地对一组不同的基准数据集进行分类,比最先进的方法更好。
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