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Open AccessJournal ArticleDOI

Randomness and degrees of irregularity.

Steve M. Pincus, +1 more
- 05 Mar 1996 - 
- Vol. 93, Iss: 5, pp 2083-2088
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TLDR
ApEn (approximate entropy), defining maximal randomness for sequences of arbitrary length, indicating the applicability to sequences as short as N = 5 points, and an infinite sequence formulation of randomness is introduced that retains the operational (and computable) features of the finite case.
Abstract
The fundamental question "Are sequential data random?" arises in myriad contexts, often with severe data length constraints. Furthermore, there is frequently a critical need to delineate nonrandom sequences in terms of closeness to randomness--e.g., to evaluate the efficacy of therapy in medicine. We address both these issues from a computable framework via a quantification of regularity. ApEn (approximate entropy), defining maximal randomness for sequences of arbitrary length, indicating the applicability to sequences as short as N = 5 points. An infinite sequence formulation of randomness is introduced that retains the operational (and computable) features of the finite case. In the infinite sequence setting, we indicate how the "foundational" definition of independence in probability theory, and the definition of normality in number theory, reduce to limit theorems without rates of convergence, from which we utilize ApEn to address rates of convergence (of a deficit from maximal randomness), refining the aforementioned concepts in a computationally essential manner. Representative applications among many are indicated to assess (i) random number generation output; (ii) well-shuffled arrangements; and (iii) (the quality of) bootstrap replicates.

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Citations
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Journal ArticleDOI

Physiological time-series analysis using approximate entropy and sample entropy

TL;DR: A new and related complexity measure is developed, sample entropy (SampEn), and a comparison of ApEn and SampEn is compared by using them to analyze sets of random numbers with known probabilistic character, finding SampEn agreed with theory much more closely than ApEn over a broad range of conditions.
Journal ArticleDOI

Changing complexity in human behavior and physiology through aging and disease.

TL;DR: It is postulated that the observed increase or decrease in complexity with aging and disease is dependent on the nature of both the intrinsic dynamics of the system and the short-term change required to realize a local task demand.
Journal ArticleDOI

Assessing serial irregularity and its implications for health.

TL;DR: The capability of ApEn to assess relatively subtle disruptions, typically found earlier in the history of a subject than mean and variance changes, holds the potential for enhanced preventative and earlier interventionist strategies.
Journal ArticleDOI

Complex systems and the technology of variability analysis

TL;DR: The ubiquitous association between altered variability and illness is highlighted, followed by an analysis of how variability analysis may significantly improve prognostication of severity of illness and guide therapeutic intervention in critically ill patients.

Research Complex systems and the technology of variability analysis

TL;DR: Variability analysis provides a novel technology with which to evaluate the overall properties of a complex system, one that is synonymous with life as mentioned in this paper, and is applied to critical care, it is the systemic properties of the host response to a physiological insult that manifest as health or illness and determine outcome in our patients.
References
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Book

The jackknife, the bootstrap, and other resampling plans

Bradley Efron
TL;DR: The Delta Method and the Influence Function Cross-Validation, Jackknife and Bootstrap Balanced Repeated Replication (half-sampling) Random Subsampling Nonparametric Confidence Intervals as mentioned in this paper.
Journal ArticleDOI

Approximate entropy as a measure of system complexity.

TL;DR: Analysis of a recently developed family of formulas and statistics, approximate entropy (ApEn), suggests that ApEn can classify complex systems, given at least 1000 data values in diverse settings that include both deterministic chaotic and stochastic processes.
Journal ArticleDOI

Physiological time-series analysis: What does regularity quantify?

TL;DR: This work provides a formal mathematical description of approximate entropy and provides a multistep description of the algorithm as applied to two contrasting clinical heart rate data sets, indicating the utility of ApEn to test this hypothesis.
Journal ArticleDOI

A regularity statistic for medical data analysis.

TL;DR: In this article, a new statistic called approximate entropy (ApEn) was developed to quantify the amount of regularity in data, which has potential application throughout medicine, notably in electrocardiogram and related heart rate data analyses and in the analysis of endocrine hormone release pulsatility.
Journal ArticleDOI

Aging and the complexity of cardiovascular dynamics.

TL;DR: A comparison of a group of healthy elderly subjects with healthy young adults indicates that the complexity of cardiovascular dynamics is reduced with aging, which suggests that complexity of variability may be a useful physiological marker.
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