Chinese Journal of Management Science ›› 2026, Vol. 34 ›› Issue (4): 298-308.doi: 10.16381/j.cnki.issn1003-207x.2024.1451
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Received:2024-08-26
Revised:2024-10-23
Online:2026-04-25
Published:2026-03-27
Contact:
Jujie Wang
E-mail:jujiewang@126.com
CLC Number:
Jujie Wang,Xin Zhang. Carbon Price Interval Forecasting Study Based on the Hybrid Quantile and Time-Varying Weights[J]. Chinese Journal of Management Science, 2026, 34(4): 298-308.
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| 试点 | 预测模型 | 评估指标 | 90%置信区间 | 95%置信区间 | 99%置信区间 |
|---|---|---|---|---|---|
| 广东 | TimesNet | PIAW | 4.9707 | 6.4727 | 12.0167 |
| PINAW | 0.1884 | 0.2453 | 0.4554 | ||
| PICP | 87.8553 | 93.5401 | 99.2248 | ||
| MPICD | 1.2588 | 1.2891 | 1.0609 | ||
| AWD | 10.6520 | 4.7815 | 0.5437 | ||
| NPatch-Transformer | PIAW | 1.9174 | 2.5889 | 4.9693 | |
| PINAW | 0.0727 | 0.0981 | 0.1883 | ||
| PICP | 58.9147 | 67.9587 | 88.1137 | ||
| MPICD | 0.9845 | 0.9902 | 1.0609 | ||
| AWD | 104.0048 | 58.7865 | 10.1403 | ||
| 湖北 | TimesNet | PIAW | 6.9430 | 9.2918 | 13.4438 |
| PINAW | 0.2394 | 0.3204 | 0.4636 | ||
| PICP | 92.0000 | 95.7500 | 98.7500 | ||
| MPICD | 1.2158 | 1.2778 | 1.4227 | ||
| AWD | 9.8612 | 4.5588 | 1.8592 | ||
| NPatch-Transformer | PIAW | 2.0910 | 3.0382 | 6.2523 | |
| PINAW | 0.0721 | 0.1048 | 0.2156 | ||
| PICP | 75.0000 | 87.2500 | 97.0000 | ||
| MPICD | 0.7405 | 0.7385 | 1.1602 | ||
| AWD | 48.7236 | 23.1186 | 3.7926 |
"
| 试点 | 组合算法 | 评估 指标 | 90%置信区间 | 95%置信区间 | 99%置信区间 |
|---|---|---|---|---|---|
| 广东 | 单目标优化 | PIAW | 2.1950 | 2.9419 | 5.6100 |
| PINAW | 0.0832 | 0.1115 | 0.2126 | ||
| PICP | 63.5659 | 71.8346 | 93.7984 | ||
| MPICD | 0.9956 | 1.0042 | 1.0334 | ||
| AWD | 74.4730 | 40.2967 | 5.4947 | ||
| 多目标时变优化 | PIAW | 3.4808 | 4.6129 | 8.5559 | |
| PINAW | 0.1319 | 0.1748 | 0.3242 | ||
| PICP | 78.5530 | 88.1137 | 97.1576 | ||
| MPICD | 1.1033 | 1.1330 | 1.0909 | ||
| AWD | 25.5929 | 12.9593 | 1.9371 | ||
| 湖北 | 单目标优化 | PIAW | 2.5321 | 3.6067 | 6.9060 |
| PINAW | 0.0873 | 0.1244 | 0.2381 | ||
| PICP | 82.5000 | 91.0000 | 97.7500 | ||
| MPICD | 0.7447 | 0.7380 | 1.0571 | ||
| AWD | 30.4614 | 14.1638 | 2.6147 | ||
| 多目标时变优化 | PIAW | 4.5970 | 6.1485 | 9.8145 | |
| PINAW | 0.1585 | 0.2120 | 0.3384 | ||
| PICP | 91.7500 | 96.5000 | 98.7500 | ||
| MPICD | 0.9441 | 0.9709 | 1.0262 | ||
| AWD | 13.2713 | 5.9440 | 1.6238 |
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