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A NEW ENSEMBLE LEARNING ALGORITHM USING REGIONAL CLASSIFIERS

机译:区域分类器的一种新的可学习算法

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摘要

We present a new ensemble learning method that employs a set of regional classifiers, each of which learns to handle a subset of the training data. We split the training data and generate classifiers for different regions in the feature space. When classifying an instance, we apply a weighted voting scheme among the classifiers that include the instance in their region. We used 11 datasets to compare the performance of our new ensemble method with that of single classifiers as well as other ensemble methods such as RBE, bagging and Adaboost. As a result, we found that the performance of our method is comparable to that of Adaboost and bagging when the base learner is C4.5. In the remaining cases, our method outperformed other approaches.
机译:我们提出了一种新的整体学习方法,该方法采用了一组区域分类器,每个分类器都学会处理训练数据的子集。我们分割训练数据并为特征空间中的不同区域生成分类器。在对实例进行分类时,我们将加权投票方案应用于在其区域中包含该实例的分类器中。我们使用11个数据集来比较新集成方法与单个分类器以及其他集成方法(如RBE,bagging和Adaboost)的性能。结果,我们发现,当基础学习者为C4.5时,我们的方法的性能与Adaboost和装袋的性能相当。在其余情况下,我们的方法优于其他方法。

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