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引用次数: 8

摘要

为监督分类问题选择一个精简的相关和非冗余特征集是一项具有挑战性的任务。提出了一种基于梯度的特征选择方法,该方法可以有效地搜索特征空间,并选择一个简化的代表性特征集。我们在五个中小型模式分类数据集以及两个用于计算机视觉应用的大型3D人脸数据集上测试了我们提出的算法。与最先进的包装器和过滤器方法的比较表明,我们提出的技术在较少的目标分类器评估次数下产生更好的分类结果。我们的算法选择的特征子集代表了数据中的类,并且分类精度变化最小。
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Gradient based efficient feature selection
Selecting a reduced set of relevant and non-redundant features for supervised classification problems is a challenging task. We propose a gradient based feature selection method which can search the feature space efficiently and select a reduced set of representative features. We test our proposed algorithm on five small and medium sized pattern classification datasets as well as two large 3D face datasets for computer vision applications. Comparison with the state of the art wrapper and filter methods shows that our proposed technique yields better classification results in lesser number of evaluations of the target classifier. The feature subset selected by our algorithm is representative of the classes in the data and has the least variation in classification accuracy.
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