Getting the Most Out of Ensemble Selection

R. Caruana, Art Munson, Alexandru Niculescu-Mizil
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引用次数: 147

Abstract

We investigate four previously unexplored aspects of ensemble selection, a procedure for building ensembles of classifiers. First we test whether adjusting model predictions to put them on a canonical scale makes the ensembles more effective. Second, we explore the performance of ensemble selection when different amounts of data are available for ensemble hillclimbing. Third, we quantify the benefit of ensemble selection's ability to optimize to arbitrary metrics. Fourth, we study the performance impact of pruning the number of models available for ensemble selection. Based on our results we present improved ensemble selection methods that double the benefit of the original method.
最大限度地利用合奏选择
我们研究了先前未探索的集成选择的四个方面,这是一个构建分类器集成的过程。首先,我们测试调整模型预测以使它们处于标准尺度上是否会使集成更有效。其次,我们探讨了不同数据量的集成爬坡时集成选择的性能。第三,我们量化了集成选择优化到任意指标的能力的好处。第四,我们研究了裁剪可用于集成选择的模型数量对性能的影响。基于我们的研究结果,我们提出了改进的集成选择方法,使原始方法的效益翻了一番。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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