Application of GSM-SVM for Forecasting Construction Output: A Case Study of Hubei Province
Abstract
:1. Introduction
- (1)
- Screening scientific and practical influencing factor indicators are the basis for construction output to conduct predictive analysis research. Based on the literature and related research, the evaluation index system for influencing factors is proposed by combining it with the current Chinese construction industry development situation to screen out the more scientific influencing factors of construction output.
- (2)
- A grid search method is used to optimize the SVM algorithm to find the optimal combination of values of penalty factor C and kernel function parameters g to improve the recognition accuracy and prediction performance of the SVM prediction model.
- (3)
- The SVM algorithm attempts to apply to Chinese construction output forecasting, and related experiments verify that the GSM-SVM forecasting model has higher accuracy and is a critical extension of the economic forecasting method of the construction industry.
2. Related Works
2.1. Current Status of Research on Factors Influencing Construction Output
2.2. Current Status of Research on Construction Output Forecasting
3. Related Methods
3.1. Definition
3.2. Construction of the Index System
3.3. SVM Prediction Model Based on GSM Optimization
4. Results and Discussion
4.1. Data Sources and Data Pre-Processing
4.2. Model Fitting Based on GSM-SVM
4.3. Model Comparison and Analysis
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Existing Method | Method Limitations | SVM Advantages | |
---|---|---|---|
Forecast of gross output of construction industry | linear regression, ARIMA Model | For linear relationships only, it cannot predict unstable data; | Kernel function can be used to solve non-linear, high-dimensional problems; |
Grey GM (1,1) | Not suitable for non-linear prediction, does not consider the influence of related factors; | Input influencing factors as feature vectors; | |
BP Neural Network | Converge to a local minimum rather than a global minimum, usually results in overfitting and unstable output data; | Obtained the optimal global solution, low generalization error rate, and more suitable for small sample learning; |
Evaluation Items | Construction Area | Company Number | Labor Productivity | Gross Assets | Gross Revenue | Investment in Fixed Assets | Regional GDP | Added Value |
---|---|---|---|---|---|---|---|---|
Correlation | 0.863 | 0.718 | 0.725 | 0.915 | 0.930 | 0.857 | 0.782 | 0.822 |
Year | Construction Area (Thousand m2) | Company Number (Unit) | Labor Productivity (Yuan/Person) | Gross Assets (Billion Yuan) | Gross Revenue (Billion Yuan) | Investment in Fixed Assets (Billion Yuan) | Regional GDP (Billion Yuan) | Added Value (Billion Yuan) | Gross Output (Billion Yuan) |
---|---|---|---|---|---|---|---|---|---|
2020 | 852,682.0 | 4633 | 752,079 | 1581.790 | 1480.225 | 2341.263 | 4344.35 | 282.80 | 1613.611 |
2019 | 920,422.3 | 4566 | 675,791 | 1488.138 | 1608.693 | 2886.884 | 4542.90 | 307.31 | 1697.967 |
2018 | 882,381.0 | 4196 | 595,205 | 1303.266 | 1435.736 | 2603.141 | 4202.20 | 278.14 | 1513.387 |
2017 | 792,576.9 | 3692 | 525,908 | 1145.165 | 1248.490 | 2377.298 | 3723.50 | 234.25 | 1339.073 |
2016 | 728,350.5 | 3368 | 458,776 | 985.331 | 1165.986 | 2287.658 | 3335.30 | 210.92 | 1186.240 |
2015 | 622,047.2 | 3218 | 454,961 | 889.491 | 1113.957 | 2182.603 | 3034.40 | 195.78 | 1059.286 |
2014 | 622,278.8 | 3217 | 487,456 | 755.753 | 971.267 | 1818.542 | 2824.21 | 187.54 | 1005.959 |
2013 | 489,379.6 | 3197 | 486,265 | 635.188 | 834.340 | 1431.225 | 2537.80 | 165.70 | 846.527 |
2012 | 391,139.0 | 2774 | 410,437 | 585.253 | 708.284 | 1105.416 | 2259.09 | 141.79 | 704.342 |
2011 | 310,237.5 | 2640 | 261,332 | 487.432 | 568.842 | 805.652 | 1994.25 | 124.68 | 558.645 |
2010 | 250,467.0 | 2846 | 268,719 | 375.635 | 465.363 | 670.191 | 1622.69 | 102.27 | 434.520 |
2009 | 204,993.3 | 2860 | 234,352 | 311.270 | 364.885 | 502.562 | 1319.21 | 84.23 | 342.189 |
2008 | 182,728.6 | 2972 | 193,189 | 225.493 | 264.597 | 356.897 | 1149.75 | 67.57 | 260.508 |
2007 | 166,796.8 | 2490 | 167,141 | 196.809 | 215.524 | 285.731 | 945.14 | 54.49 | 211.080 |
2006 | 144,782.4 | 2271 | 145,998 | 134.349 | 170.648 | 225.272 | 753.18 | 41.80 | 166.700 |
2005 | 120,911.6 | 2072 | 122,576 | 114.010 | 136.572 | 169.68 | 646.97 | 35.74 | 134.932 |
2004 | 107,201.3 | 2417 | 96,520 | 106.860 | 113.538 | 140.925 | 554.68 | 32.52 | 111.213 |
2003 | 89,334.4 | 1746 | 81,761 | 90.862 | 94.460 | 105.998 | 475.75 | 27.39 | 87.300 |
2002 | 72,275.0 | 1579 | 69,478 | 74.870 | 65.506 | 97.473 | 421.28 | 23.69 | 63.655 |
2001 | 66,626.0 | 1637 | 63,664 | 60.080 | 52.588 | 89.060 | 388.05 | 21.43 | 52.902 |
Year | Actual Value (Billion Yuan) | Value Forecasted by the GSM-SVM Model (Billion Yuan) | Relative Error (%) | Value Forecasted by the BP Neural Network (Billion Yuan) | Relative Error (%) | Value Forecasted by the Grey GM (1,1) (Billion Yuan) | Relative Error (%) |
---|---|---|---|---|---|---|---|
2020 | 1613.611 | 1601.869 | 0.7277 | 1654.968 | −2.5630 | 1708.434 | −5.8764 |
2019 | 1697.967 | 1681.539 | 0.9675 | 1736.754 | −2.2843 | 1568.251 | 7.6395 |
2018 | 1513.387 | 1516.158 | −0.1831 | 1471.862 | 2.7438 | 1433.838 | 5.2563 |
2017 | 1339.073 | 1320.183 | 1.4107 | 1339.562 | −0.0366 | 1304.956 | 2.5478 |
Value Forecasted by the GSM-SVM Model | Value Forecasted by the BP Neural Network | Value Forecasted by the Grey GM (1,1) | |
---|---|---|---|
(MAPE) % | 0.823 | 1.905 | 5.333 |
(TIC) % | 0.413 | 0.951 | 2.704 |
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Lei, M.; He, Y.; Wang, D.; He, D.; Feng, Y.; Cheng, L.; Qin, Z. Application of GSM-SVM for Forecasting Construction Output: A Case Study of Hubei Province. Buildings 2023, 13, 48. https://doi.org/10.3390/buildings13010048
Lei M, He Y, Wang D, He D, Feng Y, Cheng L, Qin Z. Application of GSM-SVM for Forecasting Construction Output: A Case Study of Hubei Province. Buildings. 2023; 13(1):48. https://doi.org/10.3390/buildings13010048
Chicago/Turabian StyleLei, Ming, Yuejie He, Dandan Wang, Debin He, Yuhao Feng, Lianhuan Cheng, and Zihao Qin. 2023. "Application of GSM-SVM for Forecasting Construction Output: A Case Study of Hubei Province" Buildings 13, no. 1: 48. https://doi.org/10.3390/buildings13010048
APA StyleLei, M., He, Y., Wang, D., He, D., Feng, Y., Cheng, L., & Qin, Z. (2023). Application of GSM-SVM for Forecasting Construction Output: A Case Study of Hubei Province. Buildings, 13(1), 48. https://doi.org/10.3390/buildings13010048