1. 河南理工大学计算机科学与技术学院,河南,焦作,454000
2. 北京科技大学信息工程学院,北京,100083
3. 河南理工大学计算机科学与技术学院河南焦作,454000
4. 北京科技大学信息工程学院北京,100083
纸质出版:2009
移动端阅览
米爱中, 郝红卫, 郑雪峰, 等. 一种自整定权值的多分类器融合方法[J]. 电子学报, 2009,37(11):2604-2609.
MI Ai-zhong, HAO Hong-wei, ZHENG Xue-feng, et al. A Method of Multiple Classifier Fusion with Self-Adjusting Weights[J]. Acta Electronica Sinica, 2009, 37(11): 2604-2609.
本文提出一种自整定权值的融合方法.该方法使用混淆矩阵来衡量分类器性能
并根据分类器输出情况自适应地为各分类器赋予权值
可靠的决策结果获得较大的权值
从而提高决策模板的可信度.对易于被错误分类的样本
在利用其与决策模板的相似性信息的同时
结合它周围的训练样本信息做出判断.通过与DT方法在KDD’99入侵检测数据集和UCI数据库中的8个数据集上的实验对比
表明本文方法具有更好的分类性能.
A fusion method with self-adjusting weights is proposed
which measures the classifier performance by the confusion matrix
and self-adaptively assigns weights to classifiers based on their outputs.Bigger weights are assigned to reliable outputs so that the decision templates are more credible.For a sample which is prone to be misclassified
besides the similarity between it and the decision templates
the information of the training samples around it are included to make a decision.Experiments were done on the KDD’99 intrusion detection dataset and 8 datasets from the database UCI to compare the proposed method with the DT method.The experimental results show the presented method has a better classification performance.
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