Effect of extreme data loss on long-range correlated and anti-correlated signals quantified by detrended fluctuation analysis
Qianli D.Y. Ma, Ronny P. Bartsch, Pedro Bernaola-Galv\'an, Mitsuru, Yoneyama, and Plamen Ch. Ivanov

TL;DR
This study examines how extreme data loss impacts the scaling behavior of long-range correlated signals using DFA, revealing that positive correlations are robust while anti-correlations are highly sensitive to data removal.
Contribution
Introduces a segmentation approach to analyze the effects of data loss on DFA scaling behavior, distinguishing between positively correlated and anti-correlated signals.
Findings
Positively correlated signals maintain their scaling up to 90% data loss.
Anti-correlated signals shift to uncorrelated behavior with minimal data loss.
Local scaling deviations occur at smaller data loss percentages for anti-correlated signals.
Abstract
We investigate how extreme loss of data affects the scaling behavior of long-range power-law correlated and anti-correlated signals applying the DFA method. We introduce a segmentation approach to generate surrogate signals by randomly removing data segments from stationary signals with different types of correlations. These surrogate signals are characterized by: (i) the DFA scaling exponent of the original correlated signal, (ii) the percentage of the data removed, (iii) the average length of the removed (or remaining) data segments, and (iv) the functional form of the distribution of the length of the removed (or remaining) data segments. We find that the {\it global} scaling exponent of positively correlated signals remains practically unchanged even for extreme data loss of up to 90%. In contrast, the global scaling of anti-correlated signals changes to…
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