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Dynamic Ensemble Selection by K-Nearest Local Oracles with Discrimination Index

机译:通过K-Circt最近的本地oracles具有歧视索引的动态集合选择

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This work describes a new oracle based Dynamic Ensemble Selection (DES) method in which an Ensemble of Classifiers (EoC) is selected to predict the class of a given test instance (x_t). The competence of each classifier is estimated on a local region (LR) of the feature space (Region of Competence - RoC) represented by the most promising k-nearest neighbors (or advisors) related to x_t according to a discrimination index (D) originally proposed in the Item and Test Analysis (ITA) theory. The D value is used to better define the advisors of the RoC since they will suggest the classifiers (local oracles) to compose the EoC. A robust experimental protocol based on 30 classification problems and 20 replications have shown that the proposed DES compares favorably with 15 state-of-the-art dynamic selection methods and the combination of all classifiers in the pool.
机译:这项工作描述了一种新的基于Oracle的动态集合选择(DES)方法,其中选择了分类器(EoC)的集合来预测给定测试实例的类(X_T)。每个分类器的竞争力估计在由最初的鉴别指数(d)相关的最有前途的K-Collect邻居(或顾问)所代表的特征空间(竞争力 - ROC区域)的本地区域(LR)。在项目和测试分析(ITA)理论中提出。 D值用于更好地定义ROC的顾问,因为它们会建议组成eoc的分类器(本地oracalles)。基于30个分类问题和20个复制的鲁棒实验方案表明,所提出的DES与15现有的动态选择方法和池中所有分类器的组合进行比较。

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