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基于Borda规则的分类器组合方法及其在手写字符识别中的应用 被引量:2

Borda-Rule-Based Combination of Multiple Classifiers and Its Application to Handwritten Digits Recognition
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摘要 提出了一种基于Borda规则的分类器组合方法。该方法将分类器组合问题看成多目标多人决策问题,是一种基于类别排序的方法。在标准手写数字数据集上对该算法进行了实验研究,证实该算法的识别率较单个分类器有明显提高,具有深入研究的价值。 This paper presents an approach based on Borda rule to combine multiple classifiers. In this method, the combination is regarded as multi-objective many-person decision making problem, which is based on class ranking. Furthermore this proposed method is utilized for recognizing handwritten digits, as a result, it effectively enhances the learning abilities compared to three individual classifiers. The results of the experiments show that this method is worth further researching.
作者 季艳 高大启
出处 《计算机与数字工程》 2005年第5期92-95,共4页 Computer & Digital Engineering
关键词 分类器组合 马氏距离 FISHER线性判别 基于最小二乘法的线性分类器 Borda规则 combination of multiple classifiers, Mahalanobis distance, Fisher linear discriminant, classifier based on least squares method, Borda rule
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参考文献7

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