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Diversity measures for multiple classifier system analysis and design

机译:用于多分类器系统分析和设计的多样性度量

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In the context of Multiple Classifier Systems, diversity among base classifiers is known to be a necessary condition for improvement in ensemble performance. In this paper the ability of several pair-wise diversity measures to predict generalisation error is compared. A new pair-wise measure, which is computed between pairs of patterns rather than pairs of classifiers, is also proposed for two-class problems. It is shown experimentally that the proposed measure is well correlated with base classifier test error as base classifier complexity is systematically varied. However, correlation with unity-weighted sum and vote is shown to be weaker, demonstrating the difficulty in choosing base classifier complexity for optimal fusion. An alternative strategy based on weighted combination is also investigated and shown to be less sensitive to number of training epochs.
机译:在多分类器系统的上下文中,已知基础分类器之间的多样性是改善整体性能的必要条件。本文比较了几种成对分集测度预测泛化误差的能力。对于两类问题,还提出了一种新的成对度量,该度量是在模式对之间而不是在分类器对之间计算的。实验证明,由于系统地改变了基本分类器的复杂度,因此所提出的度量与基本分类器测试误差具有良好的相关性。但是,与统一加权总和和投票的相关性较弱,这表明在选择基本分类器复杂度以实现最佳融合方面存在困难。还研究了基于加权组合的替代策略,并显示对训练时期的数量不太敏感。

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