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Model Selection for Body Temperature Signal Classification Using Both Amplitude and Ordinality-Based Entropy Measures

机译:使用基于幅度和基于正数的熵措施的体温信号分类模型选择

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摘要

Many entropy-related methods for signal classification have been proposed and exploited successfully in the last several decades. However, it is sometimes difficult to find the optimal measure and the optimal parameter configuration for a specific purpose or context. Suboptimal settings may therefore produce subpar results and not even reach the desired level of significance. In order to increase the signal classification accuracy in these suboptimal situations, this paper proposes statistical models created with uncorrelated measures that exploit the possible synergies between them. The methods employed are permutation entropy (PE), approximate entropy (ApEn), and sample entropy (SampEn). Since PE is based on subpattern ordinal differences, whereas ApEn and SampEn are based on subpattern amplitude differences, we hypothesized that a combination of PE with another method would enhance the individual performance of any of them. The dataset was composed of body temperature records, for which we did not obtain a classification accuracy above 80% with a single measure, in this study or even in previous studies. The results confirmed that the classification accuracy rose up to 90% when combining PE and ApEn with a logistic model.
机译:在过去的几十年中已经提出和利用了许多相关的信号分类方法。但是,有时难以找到特定目的或上下文的最佳测量和最佳参数配置。因此,次优的设置可能会产生子变量结果,甚至没有达到所需的意义水平。为了提高这些次优势情况的信号分类准确性,本文提出了以不相关措施创建的统计模型,该措施利用它们之间可能的协同作用。所采用的方法是置换熵(PE),近似熵(APEN)和样本熵(唤醒)。由于PE基于子模式序数差异,而APEN和SAMPEN基于子替代仪型幅度差异,我们假设PE与另一种方法的组合将增强其中任何一个的性能。数据集由体温记录组成,我们在本研究中或甚至在以前的研究中,我们没有获得超过80%的分类准确性。结果证实,在将PE和APEN与Logistic模型结合时,分类精度高达90%。

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