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Classifier combination based on confidence transformation

机译:基于置信度变换的分类器组合

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摘要

This paper investigates the effects of confidence transformation in combining multiple classifiers using various combination rules. The combination methods were tested in handwritten digit recognition by combining varying classifier sets. The classifier outputs are transformed to confidence measures by combining three scaling functions (global normalization, Gaussian density modeling, and logistic regression) and three confidence types (linear, sigmoid, and evidence). The combination rules include fixed rules (sum-rule, product-rule, median-rule, etc.) and trained rules (linear discriminants and weighted combination with various parameter estimation techniques). The experimental results justify that confidence transformation benefits the combination performance of either fixed rules or trained rules. Trained rules mostly outperform fixed rules, especially when the classifier set contains weak classifiers. Among the trained rules, the support vector machine with linear kernel (linear SVM) performs best while the weighted combination with optimized weights performs comparably well. I have also attempted the joint optimization of confidence parameters and combination weights but its performance was inferior to that of cascaded confidence transformation-combination. This justifies that the cascaded strategy is a right way of multiple classifier combination. (C) 2004 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文研究了置信度变换在使用各种组合规则组合多个分类器中的作用。通过组合不同的分类器集,对组合方法进行了手写数字识别测试。通过将三个缩放函数(全局归一化,高斯密度建模和逻辑回归)和三种置信度类型(线性,S形和证据)结合起来,可将分类器的输出转换为置信度。组合规则包括固定规则(求和规则,乘积规则,中位数规则等)和训练有素的规则(线性判别式和具有各种参数估计技术的加权组合)。实验结果证明,置信度转换有益于固定规则或训练规则的组合性能。训练有素的规则通常会胜过固定规则,尤其是当分类器集包含弱分类器时。在训练有素的规则中,具有线性核(线性SVM)的支持向量机表现最佳,而具有优化权重的加权组合则表现出色。我也曾尝试对置信度参数和组合权重进行联合优化,但其性能不如级联置信度变换-组合。这证明了级联策略是多个分类器组合的正确方法。 (C)2004模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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