Multi-label classification using error correcting output codes

Tomasz Kajdanowicz, Przemyslaw Kazienko
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引用次数: 28

Abstract

A framework for multi-label classification extended by Error Correcting Output Codes (ECOCs) is introduced and empirically examined in the article. The solution assumes the base multi-label classifiers to be a noisy channel and applies ECOCs in order to recover the classification errors made by individual classifiers. The framework was examined through exhaustive studies over combinations of three distinct classification algorithms and four ECOC methods employed in the multi-label classification problem. The experimental results revealed that (i) the Bode-Chaudhuri-Hocquenghem (BCH) code matched with any multi-label classifier results in better classification quality; (ii) the accuracy of the binary relevance classification method strongly depends on the coding scheme; (iii) the label power-set and the RAkEL classifier consume the same time for computation irrespective of the coding utilized; (iv) in general, they are not suitable for ECOCs because they are not capable to benefit from ECOC correcting abilities; (v) the all-pairs code combined with binary relevance is not suitable for datasets with larger label sets.
使用纠错输出码的多标签分类
本文介绍了一个由纠错输出码扩展的多标签分类框架,并对其进行了实证检验。该解决方案假设基本多标签分类器是一个有噪声的信道,并应用ecoc来恢复单个分类器造成的分类错误。通过对多标签分类问题中使用的三种不同分类算法和四种ECOC方法的组合进行详尽的研究,对该框架进行了检验。实验结果表明:(1)BCH码与任意多标签分类器匹配,分类质量较好;(ii)二值相关分类方法的准确性强烈依赖于编码方案;(iii)无论使用何种编码,标签功率集和RAkEL分类器消耗的计算时间相同;(iv)一般来说,它们不适合ECOC,因为它们不能从ECOC校正能力中获益;(v)结合二值相关的全对编码不适合标签集较大的数据集。
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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