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Combining ensemble methods of Bagging, Subagging and Random Subspace for phoneme recognition

机译:Bagging,Subagging和Random子空间的组合集成方法用于音素识别

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A `weak classifier' is a classifier that performed badly for many raisons. In general, bad performance can be caused by the highly dimensionality of the data and also the instability of the classifier. Ensemble methods has been developed in order to overcome this problems. The most popular are bagging and Random Subspace Methods (RSM). We propose to use a combination of concepts used in Bagging and Random Subspaces Methods (RSM) to make five approaches. We test this idea with Support Vector Machines (SVM). Experimental performance indicates that all proposed approaches are effective on solving a phoneme recognition problem and improves the performance of a single SVM.
机译:“弱分类器”是对许多原因表现不佳的分类器。通常,不良的性能可能是由于数据的高度维度以及分类器的不稳定性引起的。为了克服该问题,已经开发了合奏方法。最受欢迎的是装袋法和随机子空间方法(RSM)。我们建议结合使用在装袋法和随机子空间方法(RSM)中使用的概念来制定五种方法。我们用支持向量机(SVM)测试了这个想法。实验性能表明,所有提出的方法都有效解决了音素识别问题,并提高了单个SVM的性能。

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