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Dynamic ensemble pruning based on multi-label classification

机译:基于多标签分类的动态整体修剪

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Dynamic (also known as instance-based) ensemble pruning selects a (potentially) different subset of models from an ensemble during prediction based on the given unknown instance with the goal of maximizing prediction accuracy. This paper models dynamic ensemble pruning as a multi-label classification task, by considering the members of the ensemble as labels. Multi-label training examples are constructed by evaluating whether ensemble members are accurate or not on the original training set via cross-validation. We show that classification accuracy is maximized when learning algorithms that optimize example-based precision are used in the multi-label classification task. Results comparing the proposed framework against state-of-the-art dynamic ensemble pruning approaches in a variety of datasets using a heterogeneous ensemble of 200 classifiers show that it leads to significantly improved accuracy. (C) 2014 Elsevier B.V. All rights reserved.
机译:动态(也称为基于实例的)集成修剪基于给定的未知实例,在预测期间从集成中选择一个(可能)不同的模型子集,目的是最大化预测准确性。本文通过将集合的成员视为标签,将动态集合修剪建模为多标签分类任务。通过交叉验证评估合奏成员在原始训练集上是否准确,构造了多标签训练示例。我们显示,当在多标签分类任务中使用优化基于示例的精度的学习算法时,分类精度会最大化。使用200个分类器的异类集成,在各种数据集中将建议的框架与最新的动态集成修剪方法进行比较,结果表明,该方法可显着提高准确性。 (C)2014 Elsevier B.V.保留所有权利。

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