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Minimum Classification Error training employing Real-Coded Genetic Algorithms

机译:使用实编码遗传算法的最小分类误差训练

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One of the recent popular discriminative training methods, Minimum Classification Error (MCE) training, aims at efficiently developing high-performance classifiers through the minimization of smooth (differentiable in classifier parameters) classification error count loss. The smoothness enables one to use handy gradient-based minimization methods such as the probabilistic descent method. However, the gradient-based methods do not guarantee global minimization; what they pursue is basically local minimization. This locality may hinder one in exploring the achievable performance of the MCE training. To alleviate this problem, we apply one of the global optimization methods, Real-Coded Genetic Algorithms (RCGA), to the MCE training, and investigate its effectiveness experimentally. From the results, we show that the effects of the RCGA-based MCE training are limited and the conventional MCE training using the probabilistic descent method is better suited to classifier development based on the minimization of the smooth classification error count loss.
机译:最小分类误差(MCE)训练是最近流行的判别训练方法之一,旨在通过最小化平滑(分类器参数中的差异)分类误差计数损失来有效地开发高性能分类器。平滑度使人们可以使用基于方便的基于梯度的最小化方法,例如概率下降法。但是,基于梯度的方法不能保证全局最小化。他们追求的基本上是局部最小化。这种位置可能会阻碍人们探索MCE培训的可实现性能。为了缓解此问题,我们将一种全局优化方法,即实码遗传算法(RCGA)应用于MCE训练,并通过实验研究其有效性。从结果可以看出,基于RCGA的MCE训练的效果是有限的,并且基于平滑下降错误计数损失的最小化,使用概率下降方法的常规MCE训练更适合分类器开发。

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