Geometric fractal index as a tool of the time series analysis

D. Repin, G. Filaretov, F. Pashchenko, Z. Enikeeva, A. Chervova
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Abstract

The problem of the fractal dimension estimation for the time series is considered. It is proposed to use special fractality indices based on the geometric characteristics of the observed discrete realization, namely on the analysis of its curvature. The relationship between proposed indices and the Hurst exponent is demonstrated and their properties are discussed. The effectiveness of the algorithms based on the geometric approach is demonstrated using known model fractals and real time series. The fractal analysis of the internet traffic, including detection of DDoS-attacks is discussed.
几何分形指数作为时间序列分析的工具
研究了时间序列的分形维数估计问题。根据观测到的离散实现的几何特征,即对其曲率的分析,提出了特殊的分形指标。证明了所提指标与赫斯特指数之间的关系,并讨论了它们的性质。利用已知的模型分形和实时序列证明了基于几何方法的算法的有效性。讨论了网络流量的分形分析,包括对ddos攻击的检测。
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