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Pattern recognition based on the minimum norm minimum squared-error classifier

机译:基于最小范数最小平方误差分类器的模式识别

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The performance of a novel binary linear classifier named as minimum norm minimum squared-error (MNMSE), which is based on a refined minimum squared-error discriminant criterion is evaluated in this paper. Experimental results show that MNMSE is very effective and efficient for many pattern recognition problems. In most cases it can compete with support vector machines in recognition rate and be more efficient than the methods.
机译:本文评估了一种基于改进的最小平方误差判别准则的名为最小范数最小平方误差(MNMSE)的新型二进制线性分类器的性能。实验结果表明,MNMSE对于许多模式识别问题非常有效。在大多数情况下,它可以与支持向量机竞争识别率,并且比方法更有效。

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