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M-ary Rank Classifier Combination: A Binary Linear Programming Problem

机译:M-ARY等级分类器组合:二进制线性编程问题

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摘要

The goal of classifier combination can be briefly stated as combining the decisions of individual classifiers to obtain a better classifier. In this paper, we propose a method based on the combination of weak rank classifiers because rankings contain more information than unique choices for a many-class problem. The problem of combining the decisions of more than one classifier with raw outputs in the form of candidate class rankings is considered and formulated as a general discrete optimization problem with an objective function based on the distance between the data and the consensus decision. This formulation uses certain performance statistics about the joint behavior of the ensemble of classifiers. Assuming that each classifier produces a ranking list of classes, an initial approach leads to a binary linear programming problem with a simple and global optimum solution. The consensus function can be considered as a mapping from a set of individual rankings to a combined ranking, leading to the most relevant decision. We also propose an information measure that quantifies the degree of consensus between the classifiers to assess the strength of the combination rule that is used. It is easy to implement and does not require any training. The main conclusion is that the classification rate is strongly improved by combining rank classifiers globally. The proposed algorithm is tested on real cytology image data to detect cervical cancer.
机译:分类器组合的目标可以简要介绍,相结合各个分类器的决定以获得更好的分类器。在本文中,我们提出了一种基于弱等级分类器组合的方法,因为排名包含更多信息,而不是许多级问题的独特选择。将多个分类器的决策与候选类别排名形式的原始输出组合的问题被认为,并根据数据与共识决策的距离为目标函数的通用离散优化问题。该配方使用关于分类器集合的联合行为的某些性能统计。假设每个分类器产生类别的排名列表,初始方法导致二进制线性编程问题,具有简单和全局最佳解决方案。共识函数可以被视为从一组个别排名到组合排名的映射,导致最相关的决定。我们还提出了一种信息措施,可以定量分类器之间的共识程度,以评估使用的组合规则的强度。它易于实施,不需要任何培训。主要结论是通过在全球范围内组合等级分类器来强烈改善分类率。在真正的细胞学图像数据上测试所提出的算法以检测宫颈癌。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2019(21),5
  • 年度 2019
  • 页码 440
  • 总页数 17
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:分类器组合;级别;聚集;总秩序;独立;数据融合;互信息;多个投票;二进制线性规划;宫颈癌;HPV;

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