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Multi-class iteratively refined negative selection classifier

机译:多类迭代细化的否定选择分类器

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摘要

In the paper a new classification method is proposed. It is based on Negative Selection, which was originally designed for anomaly detection and dichotomic classification. In our earlier work we described M-NSA algorithm that can be applied in multi-class classification problems. Trying to improve classification accuracy of M-NSA we propose a new version of this algorithm, called MINSA, where refinement of receptors set is applied. The accuracy of MINSA was tested in an experimental way with the use of benchmark data sets. The experiments confirmed that direction of changes introduced in MINSA improves its accuracy in comparison to M-NSA. Comparison with other methods of classification is also shown in the paper.
机译:本文提出了一种新的分类方法。它基于“负选择”,该“负选择”最初设计用于异常检测和二分类。在我们早期的工作中,我们描述了可用于多类分类问题的M-NSA算法。为了提高M-NSA的分类准确性,我们提出了该算法的新版本MINSA,其中应用了受体集的细化。使用基准数据集以实验方式测试了MINSA的准确性。实验证实,与M-NSA相比,MINSA中引入的变化方向提高了其准确性。本文还显示了与其他分类方法的比较。

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