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On Nearest-Neighbor Error-Correcting Output Codes with Application to All-Pairs Multiclass Support Vector Machines

机译:最近邻纠错输出代码及其在全对多类支持向量机中的应用

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摘要

A common way of constructing a multiclass classifier is by combining the outputs of several binary ones, according to an error-correcting output code (ECOC) scheme. The combination is typically done via a simple nearest-neighbor rule that finds the class that is closest in some sense to the outputs of the binary classifiers. For these nearest-neighbor ECOCs, we improve existing bounds on the error rate of the multiclass classifier given the average binary distance. The new bounds provide insight into the one-versus-rest and all-pairs matrices, which are compared through experiments with standard datasets. The results also show why elimination (also known as DAGSVM) and Hamming decoding often achieve the same accuracy.
机译:构造多分类器的一种常见方法是根据纠错输出代码(ECOC)方案组合几个二进制分类器的输出。通常通过一个简单的最近邻规则完成组合,该规则查找在某种意义上最接近二进制分类器输出的类。对于这些最邻近的ECOC,在给定平均二进制距离的情况下,我们改善了多类分类器错误率的现有界限。新的界限提供了对一个休息矩阵和所有对矩阵的洞察力,这些矩阵通过与标准数据集的实验进行比较。结果还显示了为什么消除(也称为DAGSVM)和汉明解码经常达到相同的精度。

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