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Iterative Methods for Searching Optimal Classifier Combination Function

机译:用于搜索最佳分类器组合功能的迭代方法

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Traditional classifier combination algorithms use either non-trainable combination functions or functions trained with the goal of better separation of genuine and impostor class matching scores. Both of these approaches are suboptimal if the system is intended to perform identification of the input among few enrolled classes or templates. In this work we propose training combination functions with the goal of minimizing the misclassification rate. The main idea of proposed methods is to use a set of best or strong impostors, and attempt to construct a classifier combination function separating genuine and best impostor matching scores. We have to use iterative methods for such training, since the set of best impostors depends on currently used combination function. We present two iterative methods for constructing combination functions and perform experiments on handwritten word recognizers and biometric matchers.
机译:传统的分类器组合算法使用不可训练的组合功能或函数,其目的是更好地分离真正和冒名顶替班级匹配分数。如果系统旨在在少数注册的类或模板中执行输入,这两种方法都是次优。在这项工作中,我们提出了培训组合功能,目标是最小化错误分类率。所提出的方法的主要思想是使用一组最佳或强大的冒号,并尝试构建分类器组合功能,分离正品和最佳冒名顶替匹配分数。我们必须为这种培训使用迭代方法,因为该组最好的冒名顶替者取决于当前使用的组合功能。我们介绍了两个迭代方法,用于构建组合功能,对手写词识别器和生物识别器进行实验。

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