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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Possibilistic nonlinear dynamical analysis for pattern recognition
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Possibilistic nonlinear dynamical analysis for pattern recognition

机译:模式识别的可能非线性动力学分析

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摘要

A nonlinear dynamical system can be defined as a study of any system that implies motion, change, or evolution in time where a change in one variable is not proportional to a change in a related variable. The mathematical operations underlying such a system are very useful for pattern recognition with time-series data. One of the most recent developments in nonlinear dynamical analysis is the so-called approximate entropy family. However, its algorithms are deterministic and do not consider uncertainty where the modeling of possibility can be appropriate and advantageous in many practical situations. Thus, possibilistic entropy algorithms are proposed in this paper as a new methodology for nonlinear dynamical analysis. The proposed approach is based on the notions of the approximate entropy family, geostatistics, and the theory of fuzzy sets. Furthermore, for the first time, nonlinear dynamical analysis of mass spectrometry data is presented for computer-based recognition of potential protein biomarkers and classification, which can be utilized for early disease prediction. Experimental results using proteomic and genetic data have shown the potential application of the proposed possibilistic nonlinear dynamical analysis to the study of complex biosignals.
机译:非线性动力学系统可以定义为对任何暗示运动,变化或时间演变的系统的研究,其中一个变量的变化与相关变量的变化不成比例。这种系统所基于的数学运算对于使用时序数据进行模式识别非常有用。非线性动力学分析的最新进展之一是所谓的近似熵族。但是,它的算法是确定性的,没有考虑不确定性,因为在许多实际情况下,可能性模型都是合适且有利的。因此,本文提出了可能的熵算法,作为非线性动力学分析的一种新方法。所提出的方法基于近似熵族,地统计学和模糊集理论的概念。此外,首次提出了质谱数据的非线性动力学分析,用于基于计算机的潜在蛋白质生物标记物的识别和分类,可用于疾病的早期预测。使用蛋白质组学和遗传数据的实验结果表明,所提出的可能的非线性动力学分析在复杂生物信号研究中的潜在应用。

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