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Variance Optimized Bagging

机译:方差优化套袋

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摘要

We propose and study a new technique for aggregating an ensemble of bootstrapped classifiers. In this method we seek a linear combination of the base-classifiers such that the weights are optimized to reduce variance. Minimum variance combinations are computed using quadratic programming. This optimization technique is borrowed from Mathematical Finance where it is called Markowitz Mean-Variance Portfolio Optimization. We test the new method on a number of binary classification problems from the UCI repository using a Support Vector Machine (SVM) as the base-classifier learning algorithm. Our results indicate that the proposed technique can consistently outperform Bagging and can dramatically improve the SVM performance even in cases where the Bagging fails to improve the base-classifier.
机译:我们提出并研究了一种聚合自举分类器集合的新技术。在这种方法中,我们寻求基本分类器的线性组合,以便优化权重以减少方差。使用二次编程计算最小方差组合。这种优化技术是从“数学金融”中借用的,它被称为“ Markowitz平均方差投资组合优化”。我们使用支持向量机(SVM)作为基础分类器学习算法,从UCI存储库中对许多二进制分类问题测试了该新方法。我们的结果表明,即使在Bagging无法改善基本分类器的情况下,所提出的技术也可以始终优于Bagging,并且可以显着提高SVM性能。

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