Permutation Entropy and Information Recovery in Nonlinear Dynamic Economic Time Series
Abstract
:1. Introduction
The 1000-point collapse of the Dow Jones Industrial Average on 6 May 2010 “… was a small indicator of how complex and chaotic, in the formal sense, these systems have become …” Ben Bernanke, Interview with the International Herald Tribune, 17 May 2010
Looking Ahead
2. Permutation Entropy and Ordinal Patterns
3. Information Theoretic Estimation and Inference Base
The Cressie–Read Family of Power Divergence Measures and the PE metric
4. Estimation and Empirical Applications
4.1. PE Information Recovery Estimation
4.2. Analysis of the Full DJIA Time Series: 1901–2016
4.3 Rolling Window Analysis
4.4. Post-World War II Analysis
4.5. Rolling Window Analysis
5. Concluding Remarks
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Appendix B
Time Period | ||||
---|---|---|---|---|
Permutation | 1901–2016 | 2000–2016 | ||
Count | Relative Freq. | Count | Relative Freq. | |
1259 | 0.04 | 118 | 0.028 | |
1369 | 0.043 | 154 | 0.036 | |
1108 | 0.035 | 164 | 0.038 | |
1388 | 0.044 | 187 | 0.044 | |
1167 | 0.037 | 202 | 0.047 | |
1407 | 0.045 | 197 | 0.046 | |
1456 | 0.046 | 154 | 0.036 | |
1357 | 0.043 | 188 | 0.044 | |
1136 | 0.036 | 172 | 0.04 | |
1176 | 0.037 | 143 | 0.033 | |
1095 | 0.035 | 179 | 0.042 | |
1460 | 0.046 | 184 | 0.043 | |
1332 | 0.043 | 171 | 0.04 | |
1265 | 0.04 | 225 | 0.053 | |
1459 | 0.046 | 223 | 0.052 | |
1077 | 0.034 | 195 | 0.046 | |
1177 | 0.037 | 162 | 0.038 | |
1538 | 0.049 | 186 | 0.043 | |
1145 | 0.036 | 158 | 0.037 | |
1151 | 0.037 | 181 | 0.042 | |
1452 | 0.046 | 203 | 0.047 | |
1305 | 0.041 | 174 | 0.041 | |
1494 | 0.047 | 141 | 0.033 | |
1719 | 0.055 | 218 | 0.051 | |
Total | 31,492 | 1 | 4279 | 1 |
Appendix C
PE | ||||
---|---|---|---|---|
Period | T | D = 4 | D = 5 | D = 6 |
1901–2016 | 31,495 | 0.998 | 0.997 | 0.995 |
2000–2016 | 4282 | 0.997 | 0.994 | 0.983 |
2007–2009 | 755 | 0.992 | 0.975 | 0.91 |
Appendix D. Computational Implications
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Henry, M.; Judge, G. Permutation Entropy and Information Recovery in Nonlinear Dynamic Economic Time Series. Econometrics 2019, 7, 10. https://doi.org/10.3390/econometrics7010010
Henry M, Judge G. Permutation Entropy and Information Recovery in Nonlinear Dynamic Economic Time Series. Econometrics. 2019; 7(1):10. https://doi.org/10.3390/econometrics7010010
Chicago/Turabian StyleHenry, Miguel, and George Judge. 2019. "Permutation Entropy and Information Recovery in Nonlinear Dynamic Economic Time Series" Econometrics 7, no. 1: 10. https://doi.org/10.3390/econometrics7010010
APA StyleHenry, M., & Judge, G. (2019). Permutation Entropy and Information Recovery in Nonlinear Dynamic Economic Time Series. Econometrics, 7(1), 10. https://doi.org/10.3390/econometrics7010010