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Bagging.LMS: A Bagging-based Linear Fusion with Least-Mean-Square Error Update for Regression

机译:Bagging.LMS:基于Bagging的线性融合,具有最小均方误差更新以进行回归

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The merits of linear decision fusion in multiple learner systems have been widely accepted, and their practical applications are rich in literature. In this paper we present a new linear decision fusion strategy named BaggingmiddotLMS, which takes advantage of the least-mean-square (LMS) algorithm to update the fusion parameters in the Bagging ensemble systems. In the regression experiments on four synthetic and two benchmark data sets, we compared this method with the bagging-based simple average and adaptive mixture of experts ensemble methods. The empirical results show that the BaggingmiddotLMS method may significantly reduce the regression errors versus the other two types of Bagging ensembles, which indicates the superiority of the suggested BaggingmiddotLMS method
机译:线性决策融合在多种学习器系统中的优点已被广泛接受,其实际应用文献丰富。在本文中,我们提出了一种称为BaggingmiddotLMS的新线性决策融合策略,该策略利用最小均方(LMS)算法来更新Bagging集成系统中的融合参数。在对四个综合和两个基准数据集进行的回归实验中,我们将该方法与基于装袋的简单平均和专家组方法的自适应混合进行了比较。实证结果表明,BaggingmiddotLMS方法与其他两种类型的Bagging集成相比,可以显着降低回归误差,这表明建议的BaggingmiddotLMS方法的优越性。

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