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Enhancing feature extraction for VF detection using data mining techniques

机译:使用数据挖掘技术增强用于VF检测的特征提取

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Previous studies developed by the authors proposed VF detection algorithms, including VT discrimination, based on time-frequency distributions. However due to the large number of parameters extracted from the distributions, efficient schemes for parameter selection and significance estimation are needed. This study proposes a combined strategy of classical and modern techniques for the selection of parameters to develop improved VF detection algorithms. We show how exhaustive exploration of the input space using data mining techniques simplifies and improves the solution and reduces the computational cost of detection algorithms. Jointly with classical selection techniques (correlation, Wilks' Lambda, statistical significance), other approaches are used (PCA, SOM-Ward and CART). We show that better results are achieved using less number of parameters than previous VF detection algorithms.
机译:作者先前进行的研究提出了基于时频分布的VF检测算法,包括VT判别。但是,由于从分布中提取了大量参数,因此需要用于参数选择和重要性估计的有效方案。这项研究提出了一种经典和现代技术相结合的策略,用于选择参数以开发改进的VF检测算法。我们展示了如何使用数据挖掘技术对输入空间进行详尽的探索,从而简化和改进解决方案并降低检测算法的计算成本。结合经典选择技术(相关性,Wilks Lambda,统计显着性),使用了其他方法(PCA,SOM-Ward和CART)。我们显示,与以前的VF检测算法相比,使用更少的参数可以获得更好的结果。

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