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排列熵和泡沫熵:有序与分类关系之间的可能相互作用和协同。

Permutation Entropy and Bubble Entropy: Possible interactions and synergies between order and sorting relations.

机构信息

Technological Institute of Informatics(ITI), Universitat Politècnica de València, Campus Alcoi, Plaza Ferrándiz y Carbonell, 2, 03801, Alcoi, Spain.

Department of Internal Medicine, Móstoles Teaching Hospital, Móstoles, 28935, Madrid, Spain.

出版信息

Math Biosci Eng. 2019 Dec 10;17(2):1637-1658. doi: 10.3934/mbe.2020086.

Abstract

Despite its widely demonstrated usefulness, there is still room for improvement in the basic Permutation Entropy (PE) algorithm, as several subsequent studies have proposed in the recent years. For example, some improved PE variants try to address possible PE weaknesses, such as its only focus on ordinal information, and not on amplitude, or the possible detrimental impact of equal values in subsequences due to motif ambiguity. Other evolved PE methods try to reduce the influence of input parameters. A good representative of this last point is the Bubble Entropy (BE) method. BE is based on sorting relations instead of ordinal patterns, and its promising capabilities have not been extensively assessed yet. The objective of the present study was to comparatively assess the classification performance of this new method, and study and exploit the possible synergies between PE and BE. The claimed superior performance of BE over PE was first evaluated by conducting a series of time series classification tests over a varied and diverse experimental set. The results of this assessment apparently suggested that there is a complementary relationship between PE and BE, instead of a superior/inferior relationship. A second set of experiments using PE and BE simultaneously as the input features of a clustering algorithm, demonstrated that with a proper algorithm configuration, classification accuracy and robustness can benefit from both measures.

摘要

尽管基本排列熵 (PE) 算法已经得到了广泛的证明,但近年来仍有改进的空间,正如随后的几项研究提出的那样。例如,一些改进的 PE 变体试图解决可能的 PE 弱点,例如它只关注顺序信息,而不关注幅度,或者由于模式模糊,子序列中相等值可能产生的不利影响。其他进化的 PE 方法试图减少输入参数的影响。这方面的一个很好的代表是气泡熵 (BE) 方法。BE 基于排序关系,而不是顺序模式,其有前途的功能尚未得到广泛评估。本研究的目的是比较评估这种新方法的分类性能,并研究和利用 PE 和 BE 之间的可能协同作用。首先通过在各种不同的实验集上进行一系列时间序列分类测试,评估 BE 优于 PE 的声称优越性能。对该评估的结果显然表明,PE 和 BE 之间存在互补关系,而不是优越/劣势关系。使用 PE 和 BE 同时作为聚类算法的输入特征进行的第二组实验表明,通过适当的算法配置,分类准确性和鲁棒性可以受益于这两种措施。

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