一种改进的Norm-r损失函数的不定核机回归算法

Jingchao Zhou, Dan Wang
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引用次数: 2

摘要

不确定核机回归算法(IKMRA),其中只约束总回归误差最小,而忽略每个样本点的回归误差。因此,IKMRA的精度和泛化性能不能令人满意。为了提高IKMRA的精度和泛化性能,除了对总回归误差进行约束外,还对每个样本的回归误差进行约束。引入范数-r损失函数和松弛变量约束各样本回归误差,推导出相应梯度体面法的迭代公式,设计出相应的算法。实验结果表明改进的不确定核机回归算法(IIKMRA)是有效可行的。
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An Improved Indefinite Kernel Machine Regression Algorithm with Norm-r Loss Function
Indefinite kernel machine regression algorithm (IKMRA), in which only constrains the minimum total regression error, but each sample point regression error is ignored. Thus the accuracy and the generalization performance of the IKMRA can not be satisfied. In order to improve the precision and the generalization performance of the IKMRA, we proposed that each sample regression error be constrained besides the total regression error. We introduced the norm-r loss function and the slack variables in order to constrain each sample regression error, derived the iterative formula of corresponding gradient decent method and devised the corresponding algorithm. Experimental results show that our improved indefinite kernel machine regression algorithm (IIKMRA) is effective and feasible.
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