Tenets and Methods of Fractal Analysis (1/f Noise).

Q3 Neuroscience Advances in neurobiology Pub Date : 2024-01-01 DOI:10.1007/978-3-031-47606-8_3
Tatjana Stadnitski
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Abstract

This chapter deals with the methodical challenges confronting researchers of the fractal phenomenon known as pink or 1/f noise. This chapter introduces concepts and statistical techniques for identifying fractal patterns in empirical time series. It defines some basic statistical terms, describes two essential characteristics of pink noise (self-similarity and long memory), and outlines four parameters representing the theoretical properties of fractal processes: the Hurst coefficient (H), the scaling exponent (α), the power exponent (β), and the fractional differencing parameter (d) of the ARFIMA (autoregressive fractionally integrated moving average) method. Then, it compares and evaluates different approaches to estimating fractal parameters from observed data and outlines the advantages, disadvantages, and constraints of some popular estimators. The final section of this chapter answers the questions: Which strategy is appropriate for the identification of fractal noise in empirical settings and how can it be applied to the data?

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分形分析的原理和方法(1/f 噪声)。
本章讨论研究粉红或 1/f 噪声这种分形现象的人员所面临的方法论挑战。本章介绍了在经验时间序列中识别分形模式的概念和统计技术。它定义了一些基本统计术语,描述了粉红噪声的两个基本特征(自相似性和长记忆),并概述了代表分形过程理论特性的四个参数:赫斯特系数(H)、缩放指数(α)、幂指数(β)和 ARFIMA(自回归分形积分移动平均)方法的分形差分参数(d)。然后,本章比较并评估了从观测数据中估算分形参数的不同方法,并概述了一些常用估算器的优缺点和限制条件。本章最后一节回答了以下问题:哪种策略适合在经验环境中识别分形噪声,以及如何将其应用于数据?
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advances in neurobiology
Advances in neurobiology Neuroscience-Neurology
CiteScore
2.80
自引率
0.00%
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0
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