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Using Time Series to Analyze Long-Range Fractal Patterns [Mīkstie vāki]

(Mercy College, USA)
  • Formāts: Paperback / softback, 120 pages, height x width: 215x139 mm, weight: 150 g
  • Sērija : Quantitative Applications in the Social Sciences
  • Izdošanas datums: 20-Jan-2021
  • Izdevniecība: SAGE Publications Inc
  • ISBN-10: 1544361424
  • ISBN-13: 9781544361420
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  • Formāts: Paperback / softback, 120 pages, height x width: 215x139 mm, weight: 150 g
  • Sērija : Quantitative Applications in the Social Sciences
  • Izdošanas datums: 20-Jan-2021
  • Izdevniecība: SAGE Publications Inc
  • ISBN-10: 1544361424
  • ISBN-13: 9781544361420
Citas grāmatas par šo tēmu:
"Using Time Series to Analyze Long Range Fractal Patterns presents methods for describing and analyzing dependency and irregularity in long time series. Irregularity refers to cycles that are similar in appearance, but unlike seasonal patterns more familiar to social scientists, repeated over a time scale that is not fixed. Until now, the application of these methods has mainly involved analysis of dynamical systems outside of the social sciences, but this volume makes it possible for social scientists to explore and document fractal patterns in dynamical social systems. Author Matthijs Koopmans concentrates on two general approaches to irregularity in long time series: autoregressive fractionally integrated moving average models, and power spectral density analysis. He demonstrates the methods through two kinds of examples: simulations that illustrate the patterns that might be encountered and serve as a benchmark for interpreting patterns in real data; and secondly social science examples such a long range data on daily monthly unemployment rates, daily school attendance rates; daily numbers of births to teens, and weekly survey data on political orientation. Data and R-scripts to replicate the analyses are available in an accompanying website"--

Using Time Series to Analyze Long Range Fractal Patterns presents methods for describing and analyzing dependency and irregularity in long time series. Irregularity refers to cycles that are similar in appearance, but unlike seasonal patterns more familiar to social scientists, repeated over a time scale that is not fixed. Until now, the application of these methods has mainly involved analysis of dynamical systems outside of the social sciences, but this volume makes it possible for social scientists to explore and document fractal patterns in dynamical social systems. Author Matthijs Koopmans concentrates on two general approaches to irregularity in long time series: autoregressive fractionally integrated moving average models, and power spectral density analysis. He demonstrates the methods through two kinds of examples: simulations that illustrate the patterns that might be encountered and serve as a benchmark for interpreting patterns in real data; and secondly social science examples such a long range data on monthly unemployment figures, daily school attendance rates; daily numbers of births to teens, and weekly survey data on political orientation. Data and R-scripts to replicate the analyses are available in an accompanying website.

Recenzijas

This is coherent treatment of fractal time-series methods that will be exceptionally useful. -- Courtney Brown Each analysis is explained, and also the differences between the analyses are explained in a systematic way. -- Mustafa Demir This volume offers a nice introduction to the various methods that can be used to discuss long range dependencies in univariate time series data. Koopmans makes a compelling case for these methods and offers clear exposition -- Clayton Webb This amazing book provides a concise and solid foundation to the study of long-range process. In a short volume, the author successfully summarizes the theory of fractal approaches and provides many interesting and convincing examples. I highly recommend this book. -- I-Ming Chiu

Series Editor Introduction ix
Acknowledgments xi
About the Author xii
Chapter 1 Introduction
1(14)
A Limitations of Traditional Approaches
4(3)
B Long-Range Dependencies
7(2)
C The Search for Complexity
9(3)
D Plan of the Book
12(3)
Chapter 2 Autoregressive Fractionally Integrated Moving Average or Fractional Differencing
15(28)
A Basic Results in Time Series Analysis
15(7)
Seasonal Patterns
18(1)
Integration
19(2)
Testing for Stationarity
21(1)
B Long-Range Dependencies
22(2)
C Application of the Models to Real Data
24(17)
Competitive Modeling Strategies
30(7)
Differencing Detrended Data
37(1)
Analyzing the Residuals
38(1)
Interpretation of the Differencing Parameter
39(1)
The Hurst Exponent
40(1)
D
Chapter Summary and Reflection
41(2)
Chapter 3 Power Spectral Density Analysis
43(16)
A From the Time Domain to the Frequency Domain
44(8)
Amplitudes and Relative Frequencies
44(2)
The Fourier Transform
46(3)
Periodograms
49(1)
Power Spectral Density
50(2)
B Spectral Density in Real Data
52(3)
C Fractional Estimates of Gaussian Noise and Brownian Motion*
55(2)
D
Chapter Summary and Reflection
57(2)
Chapter 4 Related Methods in the Time and Frequency Domains
59(18)
A Estimating Fractal Variance
59(10)
Detrended Fluctuation Analysis
60(3)
Reseated Range Analysis
63(2)
Higuchi's Fractal Dimension
65(4)
Related Approaches
69(1)
B Spectral Regression
69(4)
C The Hurst Exponent Revisited
73(1)
D
Chapter Summary and Reflection
74(3)
Chapter 5 Variations on the Fractality Theme
77(8)
A Sensitive Dependence on Initial Conditions
78(1)
B The Multivariate Case
78(2)
C Regular Long-Range Processes and Nested Regularity
80(1)
D The Impact of Interventions
81(4)
Chapter 6 Conclusion
85(8)
A Benefits and Drawbacks of Fractal Analysis
86(3)
B Interpretation of Parameters in Terms of Complexity Theory
89(1)
C A Note About the Software and Its Use
90(3)
References 93(8)
Appendix 101(2)
Index 103
Dr. Matthijs Koopmans, professor of educational leadership, joined the faculty at Mercy College in 2011. Previously, he worked for several educational research organizations, including the Strategic Education Research Partnership Institute, Academy for Educational Development and Metis Associates. He has taught at several colleges in the greater New York metropolitan region (Hofstra University, York College/City University of New York, Adelphi University and Yeshiva University). As an independent contractor, he has conducted evaluations for MGT of America, Institute for Student Achievement, National Urban Technology Center and Newark Public Schools. In scholarship, his areas of focus are the application of complexity theory to education, cause and effect relationships, and the estimation of fractal patterns in time series data. This book pursues the latter interest, which stems from a belief that the effective application of principles of complexity theory in the social sciences should include attempts to extend conventional parametric models to the estimation of dynamical processes. He published his research in numerous peer-reviewed journals and continues to present his work at national and international scholarly conferences. He is a founding editor of the International Journal of Complexity in Education and serves on the editorial board of Nonlinear Dynamics, Psychology, and Life Sciences. He earned his Doctorate in 1988 from the Harvard Graduate School of Education.