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Heuristic sample reduction method for support vector data description

机译:支持向量数据描述的启发式样本约简方法

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Support vector data description (SVDD) has become one of the most promising methods for one-class classification for finding the boundary of the training set. However, SVDD has a time complexity of $O;(N^{3})$ and a space complexity of $O;(N^{2})$. When dealing with very large sizes of training sets, e.g., a training set of the aeroengine gas path parameters with the size of $N>10^{6}$ sampled from several months of flight data, SVDD fails. To solve this problem, a method called heuristic sample reduction (HSR) is proposed for obtaining a reduced training set that is manageable for SVDD. HSR maintains the classification accuracy of SVDD by building the reduced training set heuristically with the samples selected from the original. For demonstration, several artificial datasets and real-world datasets are used in the experiments. In addition, a practical example of the training set of the aeroengine gas path parameters is also used to compare the performance of SVDD based on the proposed HSR with conventional SVDD and other improved methods. The experimental results are very encouraging.
机译:支持向量数据描述(SVDD)已成为一类分类中最有希望的方法之一,用于找到训练集的边界。但是,SVDD的时间复杂度为$ O ;(N ^ {3})$,空间复杂度为$ O ;(N ^ {2})$。当处理非常大的训练集(例如,从几个月的飞行数据中采样的大小为$ N> 10 ^ {6} $的航空发动机气路参数的训练集)时,SVDD会失败。为了解决此问题,提出了一种称为启发式样本缩减(HSR)的方法,用于获得可针对SVDD管理的缩减训练集。 HSR通过使用从原始样本中选择的样本试探性地构建简化的训练集,从而保持SVDD的分类准确性。为了演示,实验中使用了一些人工数据集和真实数据集。此外,还使用了航空发动机气路参数训练集的一个实际示例,将基于建议的HSR的SVDD性能与常规SVDD和其他改进方法进行了比较。实验结果非常令人鼓舞。

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