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An Experimental Study on Rotation Forest Ensembles

机译:轮作林集合体的实验研究

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摘要

Rotation Forest is a recently proposed method for building classifier ensembles using independently trained decision trees. It was found to be more accurate than bagging, AdaBoost and Random Forest ensembles across a collection of benchmark data sets. This paper carries out a lesion study on Rotation Forest in order to find out which of the parameters and the randomization heuristics are responsible for the good performance. Contrary to common intuition, the features extracted through PCA gave the best results compared to those extracted through non-parametric discriminant analysis (NDA) or random projections. The only ensemble method whose accuracy was statistically indistinguishable from that of Rotation Forest was LogitBoost although it gave slightly inferior results on 20 out of the 32 benchmark data sets. It appeared that the main factor for the success of Rotation Forest is that the transformation matrix employed to calculate the (linear) extracted features is sparse.
机译:旋转森林是最近提出的使用独立训练的决策树构建分类器集合的方法。它被发现比袋装,AdaBoost和Random Forest在一组基准数据集上更准确。本文对轮作林进行了病害研究,以找出哪个参数和随机启发式算法可以导致良好的性能。与通常的直觉相反,与通过非参数判别分析(NDA)或随机投影提取的特征相比,通过PCA提取的特征提供了最佳结果。 LogitBoost是唯一在统计学上与Rotation Forest的准确性在统计学上无法区分的集成方法,尽管它在32个基准数据集中的20个中给出的结果稍差。看来,Rotation Forest成功的主要因素是用于计算(线性)提取特征的变换矩阵稀疏。

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