采用基于Rademacher复杂度模型选择的混合方法进行特征加权和选择

L.F. Giraldo, E. Delgado, C. Castellanos
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引用次数: 8

摘要

本研究提出了一种混合特征加权和选择模型,以降低系统维数,提高分类精度。混合选择模型通过遗传算法进行调整,其中所涉及的评估使用使用k近邻分类器的Rademacher复杂度。这种方法同时最大限度地减少了特征数量和训练错误,并提供了关于每个特征的相关性的信息。该模型在人工数据库上进行了测试,并使用从心脏信号中提取的特征进行了测试。用于缺血检测的心电图记录对应于E-STT数据库,用于心脏杂音检测的心音数据库对应于哥伦比亚国立大学组装的心音图(PCG)记录。缺血检测的分类误差为1.3%,降维率为50.7%;心杂音检测的分类误差为6.9%,降维率为87.3%。
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Feature weighting and selection using a hybrid approach based on Rademacher complexity model selection
This study proposes a hybrid feature weighting and selection model for reducing the system dimensionality, improving the classification accuracy. The hybrid selection model is tuned by means of genetic algorithms, where the involved evaluation uses the Rademacher complexity using the k-nearest neighbors classifier. This approach simultaneously minimizes the feature number and training error and provides information about the relevance of each feature. The model was tested on artificial databases as well as by using features extracted from cardiac signals. The used ECG records for ischemic detection correspond to the E-STT database and the used heart sound database for cardiac murmur detection corresponds to phonocardiographic (PCG) records assembled in the National University of Colombia. The classification error result in the ischemic detection was 1.3% with 50.7% of dimensionality reduction rate, while in the cardiac murmur detection was 6.9% with 87.3% of dimensionality reduction rate.
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