Improving pattern classification by nonlinearly combined classifiers

Mohammed Falih Hassan, I. Abdel-Qader
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引用次数: 3

Abstract

In order to improve classification accuracy, multiple classifier systems have provided better pattern classification over single classifier systems in different applications. The theoretical frameworks proposed in [5], [7] present important tools for estimating and minimizing the added error of linearly combined classifier systems. In this work, we present a theoretical model that estimates the added error using geometric mean rule which is a nonlinear combining rule. In the derivation, we assume classifiers' outputs are uncorrelated and have identical distributions for a given class case. We also show that by setting the number of classifiers to one (a single classifier system), the derived formula is modified and matches the results given in [5]. We validated our derivations with computer simulations and compared these with the analytical results. Due to the nonlinearity of the geometric mean, theoretical results show that the bias and variance errors are mixed together in their contribution to the added error. It was shown that the bias error dominated the contribution to the added error compared to the variance error. It is possible to minimize the variance error by increasing the ensemble size (number of classifiers) while the bias error is minimized under certain conditions. The proposed theoretical work can help in investigating the added error for other nonlinear arithmetic combining rules.
基于非线性组合分类器的模式分类改进
为了提高分类精度,在不同的应用中,多分类器系统比单分类器系统提供了更好的模式分类。[5]、[7]中提出的理论框架为估计和最小化线性组合分类器系统的附加误差提供了重要的工具。本文提出了一种利用非线性组合规则几何平均规则估计附加误差的理论模型。在推导中,我们假设分类器的输出是不相关的,并且对于给定的类情况具有相同的分布。我们还表明,通过将分类器的数量设置为一个(单个分类器系统),推导出的公式被修改并与[5]给出的结果相匹配。我们用计算机模拟验证了我们的推导,并将其与分析结果进行了比较。由于几何均值的非线性,理论结果表明,偏差和方差误差对附加误差的贡献是混合在一起的。结果表明,与方差误差相比,偏差误差对附加误差的贡献占主导地位。可以通过增加集合大小(分类器数量)来最小化方差误差,同时在一定条件下最小化偏倚误差。所提出的理论工作有助于研究其他非线性算法组合规则的附加误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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