Temperature Anomalies, Long Memory, and Aggregation
Abstract
:1. Introduction
2. Temperature Anomalies
3. Methods
3.1. Long Memory
- (i).
- In the spectral sense if as with a constant;
- (ii).
- In the self-similar sense if as where , with , , and is a constant;
- (iii).
- In the covariance sense if as with a constant.
3.2. Cross-Sectional Aggregation
3.3. Semiparametric Estimators of Long Memory
4. Results
4.1. Monthly Data with 1200 km Smoothing Radius and Optimal Bandwidth
4.2. Monthly Data with 250 km Smoothing Radius and Optimal Bandwidth
4.3. Robustness Exercises
5. Discussion
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
GISTEMP | NASA Goddard Institute for Space Studies Surface Temperature Analysis |
North Hem. | Northern Hemisphere |
South Hem. | Southern Hemisphere |
GPH | Geweke and Porter-Hudak log-periodogram regression |
AG | Andrews and Guggenberger bias reduced log-periodogram estimator |
LW | Local Whittle estimator |
FELW | Feasible Exact Local Whittle estimator |
Std. Dev. | Standard deviation |
Prob. Density Est. | Probability density estimate |
No. of Grids | Number of grids |
Appendix A
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Series | GPH | AG | LW | FELW | Sample Size |
---|---|---|---|---|---|
Global | 0.6332 | 0.7475 | 0.6682 | 0.6304 | 1688 |
North Hem. | 0.5429 | 0.6247 | 0.5765 | 0.5584 | 1688 |
South Hem. | 0.6407 | 0.6904 | 0.6430 | 0.6159 | 1688 |
London (,) | 0.2346 | 0.2388 | 0.2288 | 0.2354 | 1688 |
Std. Dev. * | (0.0328) | (0.0492) | (0.0256) | (0.0256) |
Series | GPH | AG | LW | FELW | No. of Grids | |
---|---|---|---|---|---|---|
0.3427 | 0.2951 | 0.3540 | 0.3738 | 1463 | 15,981 | |
(0.0347) | (0.0521) | (0.0271) | (0.0271) | |||
0.3236 | 0.3082 | 0.3389 | 0.3539 | 1560 | 8100 | |
(0.0338) | (0.0508) | (0.0264) | (0.0264) | |||
0.3624 | 0.2817 | 0.3695 | 0.3942 | 1364 | 7881 | |
(0.0357) | (0.0536) | (0.0279) | (0.0279) | |||
0.4855 | 0.4103 | 0.5019 | 0.5216 | 1642 | 5397 | |
(0.0332) | (0.0497) | (0.0259) | (0.0259) | |||
0.2164 | 0.2588 | 0.2404 | 0.2525 | 1286 | 2160 | |
(0.0366) | (0.0549) | (0.0285) | (0.0285) | |||
0.1174 | 0.0874 | 0.1084 | 0.1401 | 681 | 2090 | |
(0.0471) | (0.0707) | (0.0368) | (0.0368) |
Series | GPH | AG | LW | FELW | No. of Grids | |
---|---|---|---|---|---|---|
0.2279 | 0.2406 | 0.2277 | 0.2626 | 895 | 6185 | |
(0.0423) | (0.0634) | (0.0330) | (0.0330) | |||
0.2179 | 0.2286 | 0.2315 | 0.2596 | 1106 | 3927 | |
(0.0389) | (0.0583) | (0.0303) | (0.0303) | |||
0.2452 | 0.2615 | 0.2209 | 0.2678 | 528 | 2258 | |
(0.0522) | (0.0783) | (0.0407) | (0.0407) | |||
0.3308 | 0.3406 | 0.3315 | 0.3786 | 732 | 1685 | |
(0.0458) | (0.0687) | (0.0357) | (0.0357) | |||
0.2009 | 0.2259 | 0.2248 | 0.2678 | 845 | 797 | |
(0.0432) | (0.0649) | (0.0337) | (0.0337) | |||
0.1680 | 0.2005 | 0.1205 | 0.1633 | 284 | 1070 | |
(0.0669) | (0.1003) | (0.0521) | (0.0521) |
Series | GPH | AG | LW | FELW | No. of Grids | |
---|---|---|---|---|---|---|
0.4051 | 0.4278 | 0.3458 | 0.5573 | 78 | 6006 | |
(0.1116) | (0.1674) | (0.0870) | (0.0870) | |||
0.3784 | 0.5079 | 0.3621 | 0.5218 | 94 | 3982 | |
(0.1040) | (0.1560) | (0.0811) | (0.0811) | |||
0.4542 | 0.2802 | 0.3159 | 0.6225 | 47 | 2114 | |
(0.1367) | (0.2051) | (0.1066) | (0.1066) | |||
0.4621 | 0.5088 | 0.4074 | 0.6608 | 66 | 1563 | |
(0.1191) | (0.1786) | (0.0928) | (0.0928) | |||
0.3166 | 0.4880 | 0.3083 | 0.4939 | 77 | 761 | |
(0.1134) | (0.1700) | (0.0884) | (0.0884) | |||
0.4682 | 0.1177 | 0.2578 | 0.6449 | 24 | 1059 | |
(0.1779) | (0.2668) | (0.1387) | (0.1387) |
Series | GPH | AG | LW | FELW | No. of Grids | |
---|---|---|---|---|---|---|
0.5947 | 0.8443 | 0.5343 | 0.6429 | 78 | 6006 | |
(0.2138) | (0.3206) | (0.1667) | (0.1667) | |||
0.6276 | 1.0159 | 0.5650 | 0.6364 | 94 | 3982 | |
(0.2028) | (0.3042) | (0.1581) | (0.1581) | |||
0.5342 | 0.5284 | 0.4777 | 0.6549 | 47 | 2114 | |
(0.2424) | (0.3636) | (0.1890) | (0.1890) | |||
0.6718 | 0.8727 | 0.6115 | 0.6725 | 66 | 1563 | |
(0.2267) | (0.3401) | (0.1768) | (0.1768) | |||
0.5528 | 1.2723 | 0.4883 | 0.5924 | 77 | 761 | |
(0.2138) | (0.3206) | (0.1667) | (0.1667) | |||
0.4133 | 0.4156 | 0.3766 | 0.6872 | 24 | 1059 | |
(0.2868) | (0.4302) | (0.2236) | (0.2236) |
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Vera-Valdés, J.E. Temperature Anomalies, Long Memory, and Aggregation. Econometrics 2021, 9, 9. https://doi.org/10.3390/econometrics9010009
Vera-Valdés JE. Temperature Anomalies, Long Memory, and Aggregation. Econometrics. 2021; 9(1):9. https://doi.org/10.3390/econometrics9010009
Chicago/Turabian StyleVera-Valdés, J. Eduardo. 2021. "Temperature Anomalies, Long Memory, and Aggregation" Econometrics 9, no. 1: 9. https://doi.org/10.3390/econometrics9010009
APA StyleVera-Valdés, J. E. (2021). Temperature Anomalies, Long Memory, and Aggregation. Econometrics, 9(1), 9. https://doi.org/10.3390/econometrics9010009