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Global optimization approaches for parameter tuning in biomedical signal processing: A focus on multi-scale entropy

机译:用于生物医学信号处理的参数调整的全局优化方法:关注多尺度熵

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Many algorithms used for the analysis of physiological signals include hyper-parameters that must be selected by the investigator. The ultimate choice of these parameter values can have a dramatic impact on the performance of the approach. Addressing this issue often requires investigators to manually tune parameters for their particular data-set. In this study, we illustrate the importance of global optimization techniques for the automated determination of parameter values in the multi-scale entropy (MSE) algorithm. Importantly, we demonstrate that global optimization techniques provide an effective, and automated framework for tuning parameters of such algorithms, and easily improve upon the default settings selected by experts.
机译:用于分析生理信号的许多算法包括研究人员必须选择的超参数。这些参数值的最终选择可能对方法的性能产生重大影响。要解决此问题,通常需要研究者手动调整其特定数据集的参数。在这项研究中,我们说明了全局优化技术对于多尺度熵(MSE)算法中参数值的自动确定的重要性。重要的是,我们证明了全局优化技术为调整此类算法的参数提供了有效且自动化的框架,并且可以轻松地改进专家选择的默认设置。

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