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Overriding the experts: a fusion method for combining marginal classifiers

机译:压倒专家:结合边缘分类器的融合方法

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摘要

The design of an optimal Bayesian classifier for multiple features is dependent on the estimation of multidimensional joint probability density functions and therefore requires a design sample size that increases exponentially with the number of dimensions. A method was developed that combines classification decisions from marginal density functions using an additional classifier. Unlike voting methods, this method can select a more appropriate class than the ones selected by the marginal classifiers, thus "overriding" their decisions. It is shown that this method always exhibits an asymptotic probability of error no worse than the probability of error of the best marginal classifier.
机译:用于多个特征的最佳贝叶斯分类器的设计取决于多维联合概率密度函数的估计,因此需要一个随尺寸数呈指数增加的设计样本大小。开发了一种方法,该方法使用额外的分类器结合了边际密度函数的分类决策。与表决方法不同,此方法可以选择比边缘分类器选择的分类更合适的分类,从而“压倒”他们的决定。结果表明,该方法总是表现出渐近的误差概率,且不小于最佳边缘分类器的误差概率。

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