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Experimental study for the comparison of classifier combination methods

机译:分类器组合方法比较的实验研究

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摘要

In this paper, we compare the performances of classifier combination methods (bagging, modified random subspace method, classifier selection, parametric fusion) to logistic regression in consideration of various characteristics of input data. Four factors used to simulate the logistic model are: (a) combination function among input variables, (b) correlation between input variables, (c) variance of observation, and (d) training data set size. In view of typically unknown combination function among input variables, we use a Taguchi design to improve the practicality of our study results by letting it as an uncontrollable factor. Our experimental study results indicate the following: when training set size is large, performances of logistic regression and bagging are not significantly different. However, when training set size is small, the performance of logistic regression is worse than bagging. When training data set size is small and correlation is strong, both modified random subspace method and bagging perform better than the other three methods. When correlation is weak and variance is small, both parametric fusion and classifier selection algorithm appear to be the worst at our disappointment. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:在本文中,我们考虑了输入数据的各种特征,将分类器组合方法(装袋,改进的随机子空间方法,分类器选择,参数融合)与逻辑回归的性能进行了比较。用于模拟逻辑模型的四个因素是:(a)输入变量之间的组合函数,(b)输入变量之间的相关性,(c)观察方差,以及(d)训练数据集大小。考虑到输入变量之间通常未知的组合函数,我们使用Taguchi设计,通过将其作为不可控制的因素来提高研究结果的实用性。我们的实验研究结果表明:当训练集很大时,逻辑回归和装袋的性能没有显着差异。但是,当训练集大小较小时,逻辑回归的性能比套袋差。当训练数据集大小较小且相关性很强时,改进的随机子空间方法和装袋方法均比其他三种方法表现更好。当相关性较弱且方差较小时,参数融合和分类器选择算法似乎都令我们失望。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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