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METHODS FOR MULTI-CLASS COST-SENSITIVE LEARNING

机译:多类成本敏感型学习方法

摘要

Methods for multi-class cost-sensitive learning are based on iterative example weighting schemes and solve multi-class cost-sensitive learning problems using a binary classification algorithm. One of the methods works by iteratively applying weighted sampling from an expanded data set, which is obtained by enhancing each example in the original data set with as many data points as there are possible labels for any single instance, using a weighting scheme which gives each labeled example the weight specified as the difference between the average cost on that instance by the averaged hypotheses from the iterations so far and the misclassification cost associated with the label in the labeled example in question. It then calls the component classification algorithm on a modified binary classification problem in which each example is itself already a labeled pair, and its (meta) label is 1 or 0 depending on whether the example weight in the above weighting scheme is positive or negative, respectively. It then finally outputs a classifier hypothesis which is the average of all the hypotheses output in the respective iterations.
机译:用于多类成本敏感型学习的方法基于迭代示例加权方案,并使用二进制分类算法解决多类成本敏感型学习问题。一种方法是通过从扩展数据集中迭代应用加权采样来工作的,该加权数据采样是通过使用赋予每个数据的加权方案,对原始数据集中的每个示例使用尽可能多的数据点来增强单个示例的数据点而获得的。标记的示例的权重指定为该示例的平均成本,该平均成本是到目前为止迭代的平均假设与该标记的示例中与标签相关的误分类成本之间的差。然后,它针对修改后的二进制分类问题调用组件分类算法,其中每个示例本身已经是一个标记对,并且其(元)标签为1或0,具体取决于上述加权方案中的示例权重是正还是负,分别。然后,最后输出分类器假设,该分类器假设是各个迭代中所有假设输出的平均值。

著录项

  • 公开/公告号US2008065572A1

    专利类型

  • 公开/公告日2008-03-13

    原文格式PDF

  • 申请/专利权人 NAOKI ABE;BIANCA ZADROZNY;

    申请/专利号US20070937629

  • 发明设计人 NAOKI ABE;BIANCA ZADROZNY;

    申请日2007-11-09

  • 分类号G06N3;

  • 国家 US

  • 入库时间 2022-08-21 20:15:53

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