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Prototype selection for dynamic classifier and ensemble selection

机译:动态分类器和合奏选择的原型选择

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摘要

In dynamic ensemble selection (DES) techniques, only the most competent classifiers, for the classification of a specific test sample, are selected to predict the sample's class labels. The key in DES techniques is estimating the competence of the base classifiers for the classification of each specific test sample. The classifiers' competence is usually estimated according to a given criterion, which is computed over the neighborhood of the test sample defined on the validation data, called the region of competence. A problem arises when there is a high degree of noise in the validation data, causing the samples belonging to the region of competence to not represent the query sample. In such cases, the dynamic selection technique might select the base classifier that overfitted the local region rather than the one with the best generalization performance. In this paper, we propose two modifications in order to improve the generalization performance of any DES technique. First, a prototype selection technique is applied over the validation data to reduce the amount of overlap between the classes, producing smoother decision borders. During generalization, a local adaptive K-Nearest Neighbor algorithm is used to minimize the influence of noisy samples in the region of competence. Thus, DES techniques can better estimate the classifiers' competence. Experiments are conducted using 10 state-of-the-art DES techniques over 30 classification problems. The results demonstrate that the proposed scheme significantly improves the classification accuracy of dynamic selection techniques.
机译:在动态集合选择(DES)技术中,仅选择最有能力的分类器,用于特定测试样本的分类,以预测样本的类标签。 DES技术的关键是估计每个特定测试样本的分类的基础分类器的能力。通常根据给定的标准估计分类器的能力,该标准在验证数据上定义的测试样本的附近计算,称为能力区域。当验证数据中存在高度噪声时出现问题,导致属于能力区域以不代表查询示例。在这种情况下,动态选择技术可以选择用于将本地区域而不是具有最佳泛化性能的基本分类器。在本文中,我们提出了两种修改,以改善任何DES技术的泛化性能。首先,在验证数据上应用原型选择技术,以减少类之间的重叠量,产生更畅销的决策边界。在泛化期间,局部自适应k最近邻算法用于最小化噪声样本在能力区域中的影响。因此,DES技术可以更好地估计分类器的能力。在30个分类问题上使用10种最先进的DES技术进行实验。结果表明,该方案显着提高了动态选择技术的分类准确性。

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