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On the Combination of Logistic Regression and Local Probability Estimates

机译:关于逻辑回归与局部概率估计的组合

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摘要

Classifiers based on parametric or non-parametric learning methods have different advantages and disadvantages. To take advantage of the strengths of both methods, we propose an algorithm that combines a parametric model (logistic regression) with a non-parametric classification method (k-nearest neighbors). This combination is based on a measure of appropriateness that uses a heuristic to decide which of the two components should contribute more to the final classification output. We measure the performance of this combination method on two data sets (one from medical informatics, and one consisting of simulated data) in terms of areas under the ROC curves (AUCs). We are able to demonstrate that our method of combining classifiers exceeds the performance of both individual classifiers taken separately.
机译:基于参数或非参数学习方法的分类器具有不同的优缺点。为了利用两种方法的优点,我们提出了一种将参数模型(Logistic回归)与非参数分类方法(K-Colless邻居)组合的算法。这种组合基于使用启发式的适当性的衡量标准,以确定两个组件中的哪一个应该有助于最终分类输出。在ROC曲线(AUCS)下的区域方面,我们测量在两个数据集(来自医学信息学的一个组成的一个组合数据)上的这种组合方法的性能。我们能够证明我们组合分类器的方法超过分别采取的各个分类器的性能。

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