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Comparison of identity fusion algorithms using estimations of confusion matrices

机译:使用困惑矩阵估计的身份融合算法的比较

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Scope of this paper is to investigate the performances of different identity declaration fusion algorithms in terms of probability of correct classification, supposing that the information for combination of the inferences from the different classifier is affected by measurement errors. In particular, these information have been assumed to be provided in the form of confusion matrices. Six identity fusion algorithms from literature with different complexity have been included in the comparison: heuristic methods such as voting and Borda Count, Bayes' and Dempster-Shafer's methods and the Proportional Redistribution Rule n?? 1 in the Dempster-Shafer's framework.
机译:本文的范围是在正确分类的概率方面探讨不同身份声明融合算法的性能,假设关于从不同分类器的推论的组合的信息受测量误差的影响。特别地,已经假定这些信息以混淆矩阵的形式提供。来自不同复杂性的文献的六种身份融合算法已被列入比较:启发式方法,如投票和波尔巴数,贝叶斯和Dempster-Shafer的方法和比例再分配规则n ?? 1在Dempster-Shafer的框架中。

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