Application of Taylor Rule Fundamentals in Forecasting Exchange Rates
Abstract
:1. Introduction
1.1. Literature Review
2. Taylor Rule Fundamentals
3. Model Description
- Model 1:
- Symmetric, Smoothing, Homogeneous Coefficients and a Constant{β πt − πt * yt − yt* it−1 − it−1*}
- Model 2:
- Symmetric, Smoothing, Homogeneous Coefficients and no Constant{πt − πt * yt − yt* it−1 − it−1*}
- Model 3:
- Symmetric, Smoothing, Heterogeneous Coefficients and a Constant{β πt πt * yt yt* it−1 it−1*}
- Model 4:
- Symmetric, Smoothing, Heterogeneous Coefficients and no Constant{πt πt * yt yt* it−1 it−1*}
- Model 5:
- Symmetric, no Smoothing, Homogeneous Coefficients and a Constant{β πt − πt * yt − yt*}
- Model 6:
- Symmetric, no Smoothing, Homogeneous Coefficients and no Constant{πt − πt * yt − yt*}
- Model 7:
- Symmetric, no Smoothing, Heterogeneous Coefficients and a Constant{β πt πt * yt yt*}
- Model 8:
- Symmetric, no Smoothing, Heterogeneous Coefficients and no Constant{πt πt * yt yt*}
- Model 9:
- Asymmetric, Smoothing, Homogeneous Coefficients and a Constant{β πt − πt * yt − yt* it−1 − it−1* zt*}
- Model 10:
- Asymmetric, Smoothing, Homogeneous Coefficients and no constant{πt − πt * yt − yt* it−1 − it−1* zt*}
- Model 11:
- Asymmetric, Smoothing, Heterogeneous Coefficients and a constant{β πt πt * yt yt* it−1 it−1* zt*}
- Model 12:
- Asymmetric, Smoothing, Heterogeneous Coefficients and no Constant{πt πt * yt yt* it−1 it−1* zt*}
- Model 13:
- Asymmetric, no Smoothing, Homogeneous Coefficients and constant{β πt − πt * yt − yt* zt*}
- Model 14:
- Asymmetric, no Smoothing, Homogeneous Coefficients and no Constant{πt − πt * yt − yt* zt*}
- Model 15:
- Asymmetric, no Smoothing, Heterogeneous Coefficients and Constant{β πt πt * yt yt* zt*}
- Model 16:
- Asymmetric, no Smoothing, Heterogeneous Coefficients and no Constant{πt πt * yt yt* zt*}
4. Empirical Framework
4.1. Benchmark Model and Window Sensitivity Selection
4.2. Data Description
4.3. Estimation and Out-of-Sample Forecasting
4.4. Forecast Assessment Approach
4.5. Out-of-Sample Forecast Comparison Method
4.6. Directional Accuracy Test
5. Empirical Test Results
5.1. Stationarity Test (Unit Root Test)
5.2. Taylor Rule Fundamentals Model
5.2.1. One Month-Ahead Forecast
5.2.2. Until the Financial Crisis
5.2.3. Post-Financial Crisis
5.2.4. Two–Three Month’s Out-of-Sample Forecast
5.3. Directional Accuracy
5.4. Window Sensitivity
6. Economic Analysis and Discussions
7. Conclusions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Clark and West (CW) Test
Appendix B. Stationarity Test (Augmented Dickey–Fuller Test)
Norway | Chile | New Zealand | Mexico | U.S | ||||||
---|---|---|---|---|---|---|---|---|---|---|
M | T-Stat | M | T-Stat | M | T-Stat | M | T-Stat | M | T-Stat | |
st+1 | 2 | −11.046 *** | 2 | −11.944 *** | 2 | −10.044 *** | 2 | −13.660 *** | - | - |
it−1 | 2 | −1.394 | 2 | −3.188 ** | 2 | −1.536 | 2 | −3.533 *** | 2 | −1.616 |
t | 3 | −5.497 *** | 3 | −3.348 * | 3 | −3.240 * | 3 | −3.503 ** | 3 | −5.073 *** |
yt | 3 | −5.635 *** | 3 | −12.589 *** | 3 | −10.567 *** | 3 | −4.561 *** | 3 | −2.957 |
zt | 2 | −1.713 | 2 | −1.830 | 2 | −1.546 | 2 | −2.568 | - | - |
it−1 − it−1* | 1 | −1.972 * | 2 | −4.402 *** | Drift | −2.007 ** | 2 | −3.910 *** | - | - |
t − πt* | 3 | −4.306 *** | 2 | −3.347 ** | 3 | −3.567 ** | 1 | −2.534 ** | - | - |
yt − yt* | 3 | −6.109 *** | 3 | −13.307 *** | 3 | −10.118 *** | 3 | −5.091 *** | - | - |
zt(D) | 2 | −11.240 *** | 2 | −12.579 *** | 2 | −10.727 *** | 2 | −11.807 *** | - | - |
it−1(D) | 2 | −8.737 *** | 2 | −14.847 *** | 2 | −8.104 *** | 2 | −13.135 *** | 2 | −5.980 *** |
Appendix C. Out-of-Sample Forecast with 60 Window Size
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.8982 | 0.8192 | 0.8529 | −0.3793 | 0.9868 | 3.1196 *** | 0.9324 | 1.3117 * |
2 | 0.9244 | 0.9753 | 0.8904 | −0.6690 | 0.9163 | 0.7625 | 0.9221 | 0.0089 |
3 | 0.8834 | 2.5139 *** | 0.7563 | 0.5004 | 0.8964 | 3.5655 *** | 0.7891 | 0.9487 |
4 | 0.8329 | 1.3197 * | 0.7602 | −0.3995 | 0.8504 | 1.4779 * | 0.7849 | −1.0651 |
5 | 0.9247 | 0.6476 | 0.9434 | −0.4662 | 0.9507 | 0.8869 | 0.9273 | 0.0639 |
6 | 0.9649 | 0.9933 | 0.9617 | −0.5418 | 0.9779 | 1.3359 * | 0.9491 | −0.3468 |
7 | 0.9637 | 3.2694 *** | 0.8496 | 0.0465 | 0.9321 | 2.1055 ** | 0.9134 | 1.3351 * |
8 | 0.8715 | 0.6963 | 0.8526 | −0.9668 | 0.9105 | 1.4001 * | 0.8935 | −0.9495 |
9 | 0.8257 | −0.8020 | 0.8435 | −0.3542 | 0.9288 | 2.1614 ** | 0.9085 | 0.9310 |
10 | 0.8993 | 0.8944 | 0.8546 | −0.3696 | 0.9207 | 2.2608 ** | 0.9298 | 1.2328 |
11 | 0.8444 | 1.6622 ** | 0.7340 | −0.3737 | 0.8345 | 2.6262 *** | 0.7408 | 0.4761 |
12 | 0.8981 | 2.6203 *** | 0.7598 | 0.5393 | 0.8375 | 2.3610 *** | 0.7781 | 1.0582 |
13 | 0.8781 | −0.2905 | 0.8826 | −1.2108 | 0.8767 | −0.9117 | 0.9167 | 0.0532 |
14 | 0.9255 | 0.6613 | 0.9429 | −0.4715 | 0.9517 | 0.9092 | 0.9265 | 0.0717 |
15 | 0.9065 | 2.0943 ** | 0.8003 | −1.1445 | 0.8441 | 0.9267 | 0.8821 | 0.3895 |
16 | 0.9656 | 3.2811 *** | 0.8505 | 0.0575 | 0.8948 | 1.9619 ** | 0.9161 | 1.3074 * |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.9130 | 0.8512 | 0.8389 | −0.0752 | 1.0111 | 2.3596 *** | 1.0087 | 1.9035 ** |
2 | 1.0129 | 1.8783 ** | 0.8536 | −0.5864 | 0.9819 | 1.9450 ** | 1.0355 | 2.0877 ** |
3 | 0.9449 | 1.6752 ** | 0.7362 | 0.1460 | 0.9616 | 2.0835 ** | 0.9746 | 1.6280 * |
4 | 0.8462 | 1.0371 | 0.6939 | −0.1092 | 0.9352 | 1.8031 ** | 0.9606 | 0.8050 |
5 | 0.9354 | 0.7297 | 0.9147 | −0.4414 | 1.0144 | 2.2626 ** | 0.9956 | 0.8469 |
6 | 1.0066 | 1.7160 ** | 0.9398 | −0.6915 | 1.0465 | 2.8568 *** | 1.0390 | 1.5825 * |
7 | 0.9861 | 2.3374 *** | 0.7856 | −1.2723 | 1.0178 | 1.8237 ** | 1.0109 | 1.8679 ** |
8 | 0.9010 | 1.1180 | 0.7763 | −0.9972 | 0.9571 | 2.0061 ** | 0.9705 | 0.6645 |
9 | 0.8530 | −0.6033 | 0.9342 | −0.0923 | 0.9407 | 1.4517 * | 1.0245 | 1.1560 |
10 | 0.9139 | 0.8741 | 0.8406 | −0.0605 | 0.9853 | 2.1143 ** | 1.0100 | 1.9186 ** |
11 | 0.9389 | 1.1637 | 0.7254 | −1.1851 | 0.8903 | 1.2233 | 0.9328 | 0.6491 |
12 | 0.9793 | 1.8889 ** | 0.7406 | 0.1703 | 0.8890 | 1.4653 * | 0.9842 | 1.7114 ** |
13 | 0.9159 | 0.0625 | 0.8477 | −1.5401 | 0.9282 | 0.4731 | 0.9871 | 0.3743 |
14 | 0.9361 | 0.7205 | 0.9142 | −0.4438 | 1.0163 | 2.2849 ** | 0.9961 | 0.8554 |
15 | 0.9638 | 1.4798 * | 0.7407 | −2.4105 | 0.9787 | 1.3009 * | 1.0178 | 1.0772 |
16 | 0.9928 | 2.3920 *** | 0.7864 | −1.2923 | 0.9434 | 1.4581 * | 1.0200 | 1.8680 ** |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.8985 | −0.0223 | 0.8684 | −0.6357 | 0.9087 | 1.6652 ** | 0.9811 | 1.4600 * |
2 | 0.8756 | −0.9647 | 1.0034 | 0.9318 | 0.9215 | −1.9769 | 0.8728 | −1.0589 |
3 | 0.7832 | 0.5816 | 0.7355 | −0.8177 | 1.1478 | 2.8820 *** | 0.7222 | 0.4526 |
4 | 0.8367 | 0.0172 | 0.8238 | −0.719 | 0.8205 | 0.6305 | 0.6978 | −1.7000 |
5 | 0.9562 | 0.5537 | 0.9890 | 0.6090 | 0.9158 | −1.6638 | 0.9187 | −0.1533 |
6 | 0.9629 | −0.9979 | 1.0016 | 0.9312 | 0.9553 | −0.7282 | 0.9290 | −1.083 |
7 | 0.8754 | −0.1025 | 0.9388 | −0.3689 | 0.8219 | −1.4401 | 0.9228 | 0.7682 |
8 | 0.9059 | 0.4585 | 0.9470 | −0.2228 | 0.9272 | −0.0414 | 0.8678 | −2.6233 |
9 | 0.7626 | −0.5391 | 0.8774 | −0.6870 | 0.7730 | 0.6323 | 0.8473 | 0.2281 |
10 | 0.9004 | 0.1153 | 0.8720 | −0.6895 | 0.8014 | −0.1290 | 0.9733 | 1.3052 * |
11 | 0.7272 | −0.3102 | 0.7325 | -0.5015 | 0.9318 | 1.8273 ** | 0.6055 | 0.1523 |
12 | 0.7873 | 0.6003 | 0.7391 | −0.8850 | 0.8374 | 1.2645 | 0.6898 | 0.4658 |
13 | 0.8285 | −0.0407 | 0.8794 | −0.2763 | 0.7878 | −2.2377 | 0.8658 | −0.3735 |
14 | 0.9530 | 0.5297 | 0.9879 | 0.5823 | 0.9245 | −1.4380 | 0.9172 | −0.1245 |
15 | 0.8084 | −0.1346 | 0.8172 | −0.5581 | 0.6991 | −2.2012 | 0.8026 | −0.5160 |
16 | 0.8670 | −0.1669 | 0.9365 | −0.4199 | 0.8463 | −1.1448 | 0.9185 | 0.6142 |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.8095 | −0.9226 | 0.7973 | −1.0027 | 0.9152 | 1.7413 ** | 0.8888 | 0.5754 |
2 | 0.8692 | −0.0550 | 0.8420 | −1.2095 | 0.8583 | −0.2475 | 0.8922 | −0.6344 |
3 | 0.7399 | 1.0431 | 0.6466 | −0.1134 | 0.7361 | 1.9249 ** | 0.6468 | −0.8145 |
4 | 0.7056 | −0.9817 | 0.6342 | −1.3666 | 0.7275 | 0.0013 | 0.7016 | −2.4359 |
5 | 0.8601 | −0.5850 | 0.9169 | −1.0181 | 0.8989 | −0.1538 | 0.8972 | −0.6623 |
6 | 0.9354 | 0.3380 | 0.9394 | −1.1774 | 0.9388 | 0.4637 | 0.9300 | −0.7510 |
7 | 0.8710 | 1.7787 ** | 0.7573 | −1.0310 | 0.8217 | 0.6960 | 0.8389 | −0.3220 |
8 | 0.7893 | −1.0326 | 0.7677 | −1.4836 | 0.7995 | 0.0367 | 0.8543 | −1.7698 |
9 | 0.7268 | −2.5201 | 0.7641 | −0.4412 | 0.8270 | 0.4461 | 0.8469 | 0.1555 |
10 | 0.8095 | −0.8510 | 0.7998 | −0.9923 | 0.8392 | 0.9762 | 0.8875 | 0.5153 |
11 | 0.6732 | 0.2553 | 0.5868 | −0.4163 | 0.6428 | 1.0762 | 0.5635 | −1.2967 |
12 | 0.7526 | 1.2942 * | 0.6519 | −0.0551 | 0.6598 | 0.5047 | 0.6255 | −0.7125 |
13 | 0.7938 | −1.7760 | 0.8391 | −1.2078 | 0.8034 | −1.8932 | 0.8677 | −0.8523 |
14 | 0.8615 | −0.5556 | 0.9164 | −1.0272 | 0.9000 | −0.1150 | 0.8968 | −0.6373 |
15 | 0.7857 | 1.0447 | 0.7010 | −1.3586 | 0.7087 | −0.3285 | 0.7921 | −1.4813 |
16 | 0.8728 | 1.8382 ** | 0.7587 | −1.0201 | 0.7782 | 0.4674 | 0.8404 | −0.3776 |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.7936 | −1.0581 | 0.7825 | −0.9523 | 0.8749 | 1.2196 | 0.9050 | 1.2010 |
2 | 0.8558 | −0.3015 | 0.8308 | −1.1224 | 0.8181 | −0.8687 | 0.9050 | −0.2514 |
3 | 0.7061 | 0.6939 | 0.5964 | −0.0274 | 0.6735 | 1.9382 ** | 0.6213 | 0.1006 |
4 | 0.6741 | −1.2309 | 0.5927 | −1.3343 | 0.6825 | −0.3268 | 0.7119 | −1.6080 |
5 | 0.8400 | −0.8240 | 0.9112 | −1.1327 | 0.8695 | −0.6967 | 0.9062 | −0.3429 |
6 | 0.9278 | 0.2569 | 0.9366 | −1.2529 | 0.9185 | 0.0806 | 0.9372 | −0.4941 |
7 | 0.8426 | 1.4340 * | 0.7316 | −1.1514 | 0.7888 | 0.3984 | 0.8457 | 0.1092 |
8 | 0.7664 | −1.1463 | 0.7419 | −1.6913 | 0.7639 | −0.1768 | 0.8774 | −1.2281 |
9 | 0.7011 | −2.3364 | 0.7799 | 0.3491 | 0.7788 | −0.2020 | 0.8672 | 1.2043 |
10 | 0.7932 | −0.9875 | 0.7876 | −0.9218 | 0.7909 | 0.3491 | 0.9043 | 1.1360 |
11 | 0.6040 | 0.0915 | 0.5238 | −0.3922 | 0.5386 | 0.7354 | 0.5170 | −0.1280 |
12 | 0.7165 | 0.9625 | 0.6044 | 0.0806 | 0.5860 | −0.0114 | 0.5910 | 0.1893 |
13 | 0.7667 | −1.7693 | 0.8304 | −1.1784 | 0.7675 | −2.0489 | 0.8869 | 0.1127 |
14 | 0.8420 | −0.7888 | 0.9103 | −1.1429 | 0.8705 | −0.6441 | 0.9065 | −0.3069 |
15 | 0.7315 | 0.7575 | 0.6639 | −1.1044 | 0.6324 | −0.7536 | 0.8108 | −0.1792 |
16 | 0.8440 | 1.5029 * | 0.7320 | −1.1299 | 0.7409 | 0.1582 | 0.8487 | 0.1066 |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | |
1 | 0.3523 | 51.05% | 0.4806 | 50.21% | 0.0020 | 59.81% *** | 0.0255 | 55.65% ** |
2 | 0.7992 | 47.28% | 0.4813 | 50.21% | 0.1592 | 53.27% | 0.4249 | 50.63% |
3 | 0.6699 | 48.54% | 0.4226 | 50.63% | 0.0002 | 62.15% *** | 0.0080 | 57.74% *** |
4 | 0.1386 | 53.56% | 0.5817 | 49.37% | 0.1364 | 53.74% | 0.3751 | 51.05% |
5 | 0.1384 | 5356% | 0.5282 | 49.79% | 0.1782 | 53.27% | 0.5926 | 49.37% |
6 | 0.4239 | 50.63% | 0.4753 | 50.21% | 0.0341 | 56.07% ** | 0.8404 | 46.86% |
7 | 0.1827 | 52.72% | 0.2380 | 52.30% | 0.0728 | 55.14% * | 0.1356 | 53.56% |
8 | 0.2877 | 51.88% | 0.6927 | 48.54% | 0.0499 | 55.61% ** | 0.8918 | 46.03% |
9 | 0.8882 | 46.03% | 0.9455 | 45.19% | 0.1439 | 53.74% | 0.5375 | 49.79% |
10 | 0.4021 | 50.63% | 0.4803 | 50.21% | 0.0730 | 55.14% * | 0.0487 | 54.81% ** |
11 | 0.7288 | 48.12% | 0.5223 | 49.79% | 0.0014 | 60.28% *** | 0.7269 | 48.12% |
12 | 0.5153 | 49.79% | 0.3247 | 51.46% | 0.0012 | 60.28% *** | 0.0080 | 57.74% *** |
13 | 0.2355 | 52.30% | 0.9329 | 45.19% | 0.4155 | 50.47% | 0.5948 | 49.37 |
14 | 0.0889 | 54.39% * | 0.5277 | 49.79% | 0.1732 | 53.27% | 0.5382 | 49.79% |
15 | 0.3105 | 51.46% | 0.7996 | 47.28% | 0.0096 | 57.94% *** | 0.5783 | 49.37% |
16 | 0.1521 | 53.14% | 0.1655 | 53.14% | 0.0056 | 58.41% *** | 0.2001 | 52.72% |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | |
1 | 0.2261 | 53.70% | 0.2268 | 53.70% | 0.0060 | 62.04% *** | 0.0214 | 57.41% ** |
2 | 0.8498 | 45.37% | 0.5888 | 49.07% | 0.0271 | 59.26% ** | 0.0873 | 56.48% * |
3 | 0.5767 | 49.07% | 0.2268 | 53.70% | 0.0167 | 60.19% ** | 0.0319 | 58.33% ** |
4 | 0.2252 | 53.70% | 0.3683 | 51.85% | 0.1263 | 55.56% | 0.2725 | 52.78% |
5 | 0.1263 | 55.56% | 0.4387 | 50.93% | 0.0169 | 60.19% ** | 0.4637 | 50.00% |
6 | 0.1713 | 54.63% | 0.5014 | 50.00% | 0.0004 | 65.74% *** | 0.7102 | 47.22% |
7 | 0.0857 | 56.48% * | 0.6683 | 48.15% | 0.0414 | 58.33% ** | 0.1626 | 54.63% |
8 | 0.2268 | 53.70% | 0.4434 | 50.93% | 0.0056 | 62.04% *** | 0.8898 | 44.44% |
9 | 0.8303 | 45.37% | 0.9375 | 43.52% | 0.0947 | 55.56% * | 0.4556 | 50.00% |
10 | 0.2261 | 53.70% | 0.2268 | 53.70% | 0.0580 | 57.41% * | 0.0214 | 57.41% ** |
11 | 0.3828 | 50.93% | 0.5856 | 49.07% | 0.1160 | 55.56% | 0.9162 | 43.52% |
12 | 0.3576 | 51.85% | 0.2269 | 53.70% | 0.0417 | 58.33% ** | 0.0319 | 58.33% ** |
13 | 0.2269 | 53.70% | 0.9701 | 41.67% | 0.1204 | 55.56% | 0.7094 | 47.22% |
14 | 0.0624 | 57.41% * | 0.4387 | 50.93% | 0.0418 | 58.33% ** | 0.5499 | 49.07% |
15 | 0.2916 | 52.78% | 0.9522 | 42.59% | 0.0019 | 63.89% *** | 0.7748 | 46.30% |
16 | 0.0873 | 56.48% * | 0.5922 | 49.07% | 0.0091 | 61.11% *** | 0.2134 | 53.70% |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | |
1 | 0.4667 | 49.30% | 0.6811 | 47.89% | 0.0173 | 63.04% ** | 0.0639 | 60.56% * |
2 | 0.5559 | 47.89% | 0.3563 | 53.52% | 0.5000 | 50.00% | 0.9813 | 40.85% |
3 | 0.7539 | 46.48% | 0.8370 | 43.66% | 0.0159 | 65.22% ** | 0.5356 | 52.11% |
4 | 0.4946 | 50.70% | 0.6275 | 46.48% | 0.1303 | 56.52% | 0.9347 | 42.25% |
5 | 0.2478 | 56.34% | 0.8019 | 47.89% | 0.5732 | 47.83% | 0.7506 | 47.89% |
6 | 0.8584 | 45.07% | 0.3248 | 53.52% | 0.7525 | 45.65% | 0.9813 | 40.85% |
7 | 0.9011 | 43.66% | 0.2360 | 54.93% | 0.4408 | 47.83% | 0.3092 | 53.52% |
8 | 0.8219 | 46.48% | 0.4079 | 52.11% | 0.1930 | 54.35% | 0.9041 | 43.66% |
9 | 0.6879 | 45.07% | 0.6098 | 47.89% | 0.1629 | 52.17% | 0.2738 | 54.93% |
10 | 0.5559 | 47.89% | 0.6630 | 47.89% | 0.1930 | 54.35% | 0.1567 | 57.75% |
11 | 0.9168 | 42.25% | 0.2145 | 50.70% | 0.0031 | 67.39% *** | 0.7506 | 47.89% |
12 | 0.7539 | 46.48% | 0.7768 | 45.07% | 0.0510 | 60.57% * | 0.3304 | 54.93% |
13 | 0.2740 | 54.93% | 0.3227 | 47.89% | 0.6032 | 47.83% | 0.7315 | 49.30% |
14 | 0.2478 | 56.34% | 0.8589 | 46.48% | 0.3668 | 52.17% | 0.5964 | 50.70% |
15 | 0.5808 | 49.30% | 0.3227 | 47.89% | 0.6096 | 43.48% | 0.4702 | 50.70% |
16 | 0.8442 | 45.07% | 0.2360 | 54.93% | 0.2022 | 52.17% | 0.2887 | 53.52% |
Appendix D. Out-of-Sample Forecast with 120 Window Size
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.9063 | −2.0031 | 0.9592 | −0.2488 | 0.8771 | 0.3452 | 0.9543 | 0.0799 |
2 | 0.9444 | −1.8616 | 0.9742 | −0.1443 | 0.9334 | −0.2917 | 0.9562 | −0.3261 |
3 | 0.9779 | 2.1202 ** | 0.9303 | 0.8035 | 0.8851 | 1.5198 * | 0.8611 | −0.5517 |
4 | 0.9463 | 1.6581 ** | 0.9124 | −0.2047 | 0.9175 | 1.0503 | 0.9053 | 0.0158 |
5 | 0.9294 | −2.0619 | 0.9740 | −0.3223 | 0.9476 | 0.0666 | 0.9709 | 0.2446 |
6 | 0.9396 | −2.3887 | 0.9838 | −0.0265 | 0.9611 | 0.2315 | 0.9655 | −1.2765 |
7 | 0.9906 | 2.2043 ** | 0.9476 | 0.5955 | 0.9115 | 1.5477 * | 0.8872 | −1.8763 |
8 | 0.9533 | 0.2775 | 0.9624 | −0.1645 | 0.9382 | 0.3376 | 0.9457 | −0.5228 |
9 | 0.9031 | −2.1569 | 0.9453 | −0.0644 | 0.8608 | −0.1151 | 0.9122 | −1.2996 |
10 | 0.9082 | −1.9923 | 0.9590 | −0.2339 | 0.8742 | −0.2544 | 0.9523 | 0.0339 |
11 | 0.9378 | 1.9324 ** | 0.9175 | 0.7506 | 0.8527 | 1.0948 | 0.8450 | −0.7142 |
12 | 0.9784 | 2.0693 ** | 0.9307 | 0.8029 | 0.8682 | 0.6805 | 0.8576 | −0.6301 |
13 | 0.8877 | −2.8950 | 0.9661 | −0.2035 | 0.9276 | −0.3192 | 0.9403 | −0.8985 |
14 | 0.9295 | −2.0453 | 0.9740 | −0.3240 | 0.9399 | −0.0676 | 0.9681 | 0.2120 |
15 | 0.9473 | 1.5808 * | 0.9288 | 0.1818 | 0.8782 | 1.0077 | 0.8608 | −2.2444 |
16 | 0.9948 | 2.0611 ** | 0.9492 | 0.6005 | 0.8837 | 1.0024 | 0.8807 | −1.9585 |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.8852 | −2.0073 | 0.9418 | −0.4307 | 0.8785 | −1.1306 | 0.9697 | 0.6728 |
2 | 0.9099 | −1.9923 | 0.9509 | −0.3719 | 0.8878 | −0.9423 | 0.9735 | 0.0772 |
3 | 1.0900 | 1.3703 * | 0.8952 | −0.0084 | 0.8971 | −0.0339 | 0.9965 | 1.3638 * |
4 | 0.9816 | 0.7211 | 0.8286 | −0.7747 | 0.9041 | −0.0054 | 1.0485 | 1.7695 ** |
5 | 0.9075 | −1.7657 | 0.9428 | −0.4945 | 0.9344 | −0.3158 | 1.0263 | 1.4759 * |
6 | 0.9231 | −1.8502 | 0.9483 | −0.3994 | 0.9731 | 0.3959 | 1.0166 | 1.7695 ** |
7 | 1.1572 | 1.5436 * | 0.9330 | −0.2035 | 0.9471 | 0.3600 | 0.9512 | −0.4345 |
8 | 0.9177 | −0.8924 | 0.9009 | −0.8425 | 0.8529 | −1.2831 | 1.0251 | 1.4005 * |
9 | 0.8898 | −1.4926 | 0.9539 | −0.4171 | 0.8592 | −1.5545 | 0.9652 | 0.3590 |
10 | 0.8869 | −2.0436 | 0.9425 | −0.4210 | 0.8643 | −1.4193 | 0.9688 | 0.6423 |
11 | 1.0983 | 1.0720 | 0.8996 | 0.0564 | 0.8881 | −0.0162 | 0.9934 | 0.7555 |
12 | 1.1164 | 1.3685 * | 0.8980 | 0.0147 | 0.9047 | 0.1239 | 0.9980 | 1.3315 * |
13 | 0.9074 | −1.4510 | 0.9572 | −0.3681 | 0.9190 | −0.3573 | 1.0176 | 0.8172 |
14 | 0.9084 | −1.7872 | 0.9430 | −0.4890 | 0.9214 | −0.4453 | 1.0257 | 1.4806 * |
15 | 1.1416 | 1.3313 * | 0.9545 | −0.0076 | 0.8691 | −0.2929 | 0.9377 | −1.1007 |
16 | 1.1768 | 1.5382 * | 0.9381 | −0.1377 | 0.8642 | −1.0485 | 0.9536 | −0.4134 |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.9873 | 0.2859 | 0.9888 | 0.1923 | 0.4821 | −0.1519 | 1.0832 | 1.3836 * |
2 | 0.8243 | −1.3386 | 1.0631 | 2.0984 ** | 1.0249 | 0.9143 | 0.7852 | −0.7178 |
3 | 0.5715 | −1.3473 | 1.0213 | 0.9981 | 0.9444 | 0.5387 | 0.9334 | 0.2996 |
4 | 0.5528 | −1.3412 | 0.9931 | 0.2134 | 0.5873 | −0.4984 | 0.6344 | −1.4861 |
5 | 0.9873 | 0.2171 | 1.0684 | 2.3011 ** | 1.0186 | 0.5244 | 0.7718 | −0.6564 |
6 | 0.8874 | −1.3408 | 1.0661 | 2.4418 *** | 1.0263 | 0.9407 | 0.9806 | −0.6138 |
7 | 0.9461 | 0.5983 | 1.0595 | 1.9601 ** | 0.9223 | −0.2711 | 0.7155 | −0.8690 |
8 | 0.9755 | 0.7698 | 1.0576 | 1.7816 ** | 0.9179 | −0.3024 | 0.9627 | −0.1872 |
9 | 1.0379 | 0.9937 | 0.9962 | 0.2962 | 0.4420 | −0.1482 | 1.0545 | 1.0591 |
10 | 0.9887 | 0.3092 | 0.9869 | 0.1491 | 0.6625 | −0.0935 | 1.0875 | 1.5015 * |
11 | 0.4934 | −1.2789 | 1.2106 | 2.5037 *** | 1.1149 | 1.2577 | 0.7497 | 0.6434 |
12 | 0.5717 | −1.3399 | 1.0245 | 1.0625 | 0.6338 | −0.2372 | 0.9027 | −0.2176 |
13 | 1.0379 | 0.8520 | 0.9898 | 0.1858 | 0.9805 | 0.2122 | 0.7788 | −0.7543 |
14 | 0.9930 | 0.3341 | 1.0670 | 2.2501 ** | 1.0239 | 0.6777 | 0.7513 | −0.6540 |
15 | 0.8756 | −0.4526 | 1.0151 | 0.5896 | 0.8187 | −0.4810 | 0.7079 | −0.8501 |
16 | 0.9267 | 0.3508 | 1.0578 | 1.9536 ** | 0.9112 | −0.3509 | 0.6714 | −0.7914 |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.8803 | −2.2716 | 0.9534 | −0.3441 | 0.8392 | −0.3273 | 0.9403 | −0.3125 |
2 | 0.9276 | −1.7871 | 0.9638 | −0.4639 | 0.9014 | −0.8334 | 0.9444 | −0.6587 |
3 | 0.9232 | 1.2349 | 0.9038 | 0.4537 | 0.8160 | 0.3999 | 0.8258 | −1.2834 |
4 | 0.8937 | 0.6735 | 0.8862 | −0.4857 | 0.8492 | 0.0195 | 0.8785 | −0.4377 |
5 | 0.9094 | −2.2157 | 0.9604 | −0.7320 | 0.9218 | −0.5795 | 0.9646 | 0.0180 |
6 | 0.9289 | −2.4494 | 0.9700 | −0.4971 | 0.9404 | −0.3609 | 0.9634 | −1.3256 |
7 | 0.9497 | 1.4161 * | 0.9193 | −0.0666 | 0.8652 | 0.6480 | 0.8583 | −2.3034 |
8 | 0.9189 | −0.6074 | 0.9376 | −0.7488 | 0.9009 | −0.4585 | 0.9295 | −0.9545 |
9 | 0.8589 | −2.8561 | 0.9394 | −0.0351 | 0.8209 | −0.6857 | 0.8787 | −1.7814 |
10 | 0.8831 | −2.2473 | 0.9532 | −0.3229 | 0.8373 | −0.8153 | 0.9382 | −0.3561 |
11 | 0.8721 | 1.1844 | 0.3881 | 0.2842 | 0.7758 | 0.0431 | 0.7959 | −1.4531 |
12 | 0.9219 | 1.2620 | 0.9038 | 0.4536 | 0.7941 | −0.4536 | 0.8212 | −1.3982 |
13 | 0.8470 | −3.1445 | 0.9565 | −0.3710 | 0.8993 | −0.9476 | 0.9168 | −1.3938 |
14 | 0.9105 | −2.2087 | 0.9604 | −0.7318 | 0.9122 | −0.7071 | 0.9619 | −0.0051 |
15 | 0.8885 | 0.6817 | 0.8919 | −0.4111 | 0.8279 | 0.2137 | 0.8143 | −2.4786 |
16 | 0.9502 | 1.2829 * | 0.9211 | −0.0472 | 0.8426 | 0.2793 | 0.8506 | −2.3818 |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | R.MSFE | T-Stat | |
1 | 0.8710 | −2.4126 | 0.9616 | −0.1370 | 0.8200 | −0.6012 | 0.9443 | −0.1471 |
2 | 0.9191 | −1.9359 | 0.9733 | −0.1804 | 0.8871 | −1.0439 | 0.9480 | −0.5165 |
3 | 0.8933 | 0.9542 | 0.8895 | 0.2959 | 0.7854 | 0.1078 | 0.8317 | −0.8595 |
4 | 0.8675 | 0.2673 | 0.8793 | −0.4550 | 0.8154 | −0.2684 | 0.8855 | −0.0686 |
5 | 0.9016 | −2.4215 | 0.9645 | −0.6893 | 0.9148 | −0.8014 | 0.9712 | 0.2162 |
6 | 0.9244 | −2.6400 | 0.9730 | −0.4653 | 0.9351 | −0.5786 | 0.9704 | −0.8319 |
7 | 0.9252 | 1.2043 | 0.9144 | −0.1315 | 0.8545 | 0.5759 | 0.8683 | −2.0687 |
8 | 0.9047 | −0.8939 | 0.9407 | −0.5960 | 0.8999 | −0.5462 | 0.9421 | −0.5791 |
9 | 0.8379 | −2.8230 | 0.9433 | 0.1731 | 0.8003 | −0.8976 | 0.8864 | −1.2824 |
10 | 0.8744 | −2.3761 | 0.9614 | −0.1168 | 0.8195 | −1.0777 | 0.9424 | −0.1968 |
11 | 0.8282 | 0.8312 | 0.8540 | 0.1699 | 0.7347 | −0.3572 | 0.8020 | −0.8008 |
12 | 0.8896 | 1.0079 | 0.8887 | 0.2882 | 0.7600 | −0.8445 | 0.8275 | −0.9585 |
13 | 0.8258 | −3.0366 | 0.9561 | −0.3502 | 0.8912 | −1.0845 | 0.9307 | −0.7334 |
14 | 0.9033 | −2.4166 | 0.9644 | −0.6922 | 0.9044 | −0.9198 | 0.9689 | 0.1927 |
15 | 0.8485 | 0.3265 | 0.8777 | −0.4391 | 0.8160 | 0.1595 | 0.8260 | −2.0376 |
16 | 0.9224 | 1.0422 | 0.9155 | −0.1209 | 0.8400 | 0.3093 | 0.8607 | −2.1412 |
Model | Norway | Chile | New Zealand | Mexico | ||||
---|---|---|---|---|---|---|---|---|
PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | PT p-Value | Directional Accuracy | |
1 | 0.9074 | 44.69% | 0.8825 | 45.25% | 0.0326 | 56.49% ** | 0.3370 | 51.40% |
2 | 0.9755 | 42.46% | 0.9228 | 44.13% | 0.6281 | 48.70% | 0.4035 | 50.84% |
3 | 0.0514 | 55.31% * | 0.2580 | 52.51% | 0.0732 | 55.19% * | 0.4065 | 50.84% |
4 | 0.5083 | 50.84% | 0.2527 | 51.40% | 0.3117 | 51.95% | 0.5851 | 49.16% |
5 | 0.9749 | 42.46% | 0.6633 | 48.04% | 0.6286 | 48.70% | 0.2730 | 51.96% |
6 | 0.7720 | 46.93% | 0.4321 | 50.28% | 0.4340 | 50.65% | 0.5845 | 49.16% |
7 | 0.3912 | 50.84% | 0.7515 | 47.49% | 0.0894 | 55.19% * | 0.9421 | 44.13% |
8 | 0.9305 | 46.37% | 0.9229 | 44.13 | 0.0328 | 57.14% ** | 0.5212 | 49.72% |
9 | 0.9512 | 44.13% | 0.5924 | 48.60% | 0.4356 | 50.65% | 0.6451 | 48.60% |
10 | 0.8782 | 45.25% | 0.8512 | 45.81% | 0.2969 | 51.95% | 0.3331 | 51.40% |
11 | 0.0536 | 55.87% * | 0.1431 | 54.19% | 0.2470 | 52.60% | 0.5888 | 49.16% |
12 | 0.0744 | 54.75% * | 0.2580 | 52.51% | 0.1994 | 53.25% | 0.4671 | 50.28% |
13 | 0.9793 | 43.02% | 0.7546 | 46.93% | 0.5000 | 50.00% | 0.5275 | 49.72% |
14 | 0.9325 | 44.13% | 0.7191 | 47.49% | 0.4347 | 50.65% | 0.3889 | 50.84% |
15 | 0.0605 | 55.87% * | 0.6883 | 48.60% | 0.4335 | 50.65% | 0.8427 | 46.37% |
16 | 0.2773 | 51.96% | 0.6477 | 48.60% | 0.1952 | 53.25% | 0.9225 | 44.69% |
1 | This fact is supported by evidence reported by Bloomberg on 27 August 2019. https://www.bloomberg.com/news/articles/2019-08-26/norway-s-1-trillion-fund-weighs-pivotal-shift-to-u-s-stocks (accessed on 11 September 2020). |
2 | U.S. and Norway are part of the world’s largest oil producers. Chile is among the world’s copper producers. New Zealand provides about 50 percent of the world’s export of lamb and mutton. |
3 | Diebold and Mariano (1995) and West (1996) (DMW tests) introduced tests for equal predictability for non-nested models. |
4 | πt† is positive since deflation could be more harmful to the economy than low inflation (Molodtsova and Papell 2009). |
5 | The foreign exchange rates are extracted from the Federal Reserve Bank of St. Louis database. The remaining data are taken from DataStream. Industrial Productions (IP) are used as the output, except New Zealand whose IP data index was only available in quarterly frequencies up to 2017 Q4. However, since the study works with monthly data, the Eviews 11 student version is used to convert the quarterly data to monthly frequencies which is available up to 2017M10. |
6 | A 14,400 smoothness parameter is applied for the HP filter since the data frequency is monthly. |
7 | Inflation rate (πt): ln(CPIt) − ln(CPIt−12). Thus, the inflation rate is measured as the 12-month difference of the CPI. The lag of interest rate: it−1 Real exchange rate (zt): st + pt − pt*), pt and pt* are the log CPIt of the U.S and foreign countries. |
8 | In Cheung et al. (2019), though the Taylor rule fundamentals are evaluated to outperform the random walk, the null hypothesis of the random walk could not be rejected when the DMW test was applied. |
9 | We need to note that applying the test to the sub sample could change the stationarity result of the ADF test. In addition, due to country-specific data and target, it is more likely to see no stationarity which makes it difficult to interpret stationarity, but that is not the objective in this paper. |
10 | For Norway, Chile and Mexico, the number of observations (T + 1) is 299, and the number of forecasts (P) is 239. However, due to the unavailability of data for New Zealand, (T + 1) = 274 and P = 214. |
11 | |
12 | (T + 1) = 168 and P = 108 for Norway, Chile, New Zealand and Mexico. |
13 | Molodtsova and Papell (2012) use prescriptive Taylor rule models to investigate out-of-sample exchange rate forecasting at the time of the financial crisis. They found successive predictability of the USD/EUR exchange rate with the Taylor rule model during the financial crisis. Byrne et al. (2016) also find evidence of exchange rate predictability with the Taylor rule fundamentals at the financial crisis period. |
14 | As usual, 60 observations from the sample data are used for the estimation under a rolling window regression. One month-ahead out-of-sample forecast is performed for the remaining sample. CW statistics is used to test the forecast accuracy. Norway, Chile and Mexico, (T + 1) = 131 and P = 71. For New Zealand, (T + 1) = 106 and P = 46. |
15 | Clark and West (2006, 2007) recommend that a Newey–West estimator should be regressed on the t+1 to make our forecast more robust. The Newey–West lag is computed as proposed by Newey and West (1987) as lnw = floor [4(P/100)2/9]. The Newey–West lag for Norway, Chile and Mexico is lnw = floor [4.8545] = 4. For New Zealand, lnw = floor [4.7368] = 4. |
16 | |
17 | Models 9 and 13 and models 2, 5, 6, 11 and 14 with the evaluation concept outperformed the random walk for Norway and New Zealand, respectively, but they are not significant with the CW statistics. |
18 | This could be biased since a very small sample of data was left for the out-of-sample forecast. |
19 | Molodtsova and Papell (2012) examined the USD/EUR exchange rate during the financial crisis and found that the Taylor rule fundamental could still predict the exchange. Ince et al. (2016) also proved the predictability of the Taylor rule fundamentals during the financial crisis and the great recession for eight countries. |
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Norway | Chile | New Zealand | Mexico | |
---|---|---|---|---|
Accurate Models | Accurate Models | Accurate Models | Accurate Models | |
Full Sample—One Month Ahead | 3, 4, 7, 11, 12, 15, 16 | None | 1, 3, 4, 6, 7, 8, 9, 10, 11, 12, 16 | 1, 7, 16 |
Until the Financial Crisis | 2, 3, 6, 7, 12, 15, 16 | None | 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 12, 14, 15, 16 | 1, 2, 3, 6, 7, 10, 12, 16 |
Post-Financial Crisis | None | None | 1, 3, 11 | 1, 10 |
Full Sample—Two Months Ahead | 7, 12, 16 | None | 1, 3 | None |
Full Sample—Three Months Ahead | 7, 16 | None | 3 | None |
Norway | Chile | New Zealand | Mexico | |
---|---|---|---|---|
Accurate Models | Accurate Models | Accurate Models | Accurate Models | |
Full Sample—One Month Ahead | 3, 4, 7, 11, 12, 15, 16 | None | 3, 7 | None |
Until the Financial Crisis | 3, 7, 12, 15, 16 | None | None | 3, 4, 5, 6, 8, 12, 14 |
Post-Financial Crisis | None | 2, 5, 6, 7, 8, 11 14, 16 | None | 1, 10 |
Full Sample—Two Months Ahead | 7, 16 | None | None | None |
Full Sample—Three Months Ahead | None | None | None | None |
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Agyapong, J. Application of Taylor Rule Fundamentals in Forecasting Exchange Rates. Economies 2021, 9, 93. https://doi.org/10.3390/economies9020093
Agyapong J. Application of Taylor Rule Fundamentals in Forecasting Exchange Rates. Economies. 2021; 9(2):93. https://doi.org/10.3390/economies9020093
Chicago/Turabian StyleAgyapong, Joseph. 2021. "Application of Taylor Rule Fundamentals in Forecasting Exchange Rates" Economies 9, no. 2: 93. https://doi.org/10.3390/economies9020093
APA StyleAgyapong, J. (2021). Application of Taylor Rule Fundamentals in Forecasting Exchange Rates. Economies, 9(2), 93. https://doi.org/10.3390/economies9020093