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Minimum classification error training with automatic setting of loss smoothness

机译:具有自动设置损耗平滑度的最小分类错误训练

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The loss function smoothness embedded in the Minimum Classification Error formalization increases the number of virtual training samples, enables high robustness to unseen samples, and well approximates the ultimate, minimum classification error probability status. However, a rational method for controlling smoothness has not yet been developed. To alleviate this long-standing problem, we propose a new method that automatically sets the loss function smoothness through Parzen kernel (window) width estimation with a cross-validation maximum likelihood method. Experiments clearly show our proposed method's high utility.
机译:最小分类误差形式化中嵌入的损失函数平滑度增加了虚拟训练样本的数量,对看不见的样本具有很高的鲁棒性,并且很好地近似了最终的最小分类误差概率状态。但是,尚未开发出用于控制平滑度的合理方法。为了缓解这个长期存在的问题,我们提出了一种新方法,该方法通过使用交叉验证最大似然方法通过Parzen核(窗口)宽度估计来自动设置损失函数的平滑度。实验清楚地表明了我们提出的方法的高实用性。

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