Prediction of construction and assembly production in the province of Lower Silesia. Part I
The article is the first part of the series „Prediction construction and assembly production in Lower Silesia.” It was assumed that salary of employees will be one of the independent variables to determine the volume of production. Salaries of employees was predicted, using multiple regression and...
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Lublin University of Technology
2012-12-01
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doaj-3c802580ffe144f99c9339ee97a2d0442021-01-20T13:01:19ZengLublin University of TechnologyBudownictwo i Architektura1899-06652544-32752012-12-0111210.35784/bud-arch.2224Prediction of construction and assembly production in the province of Lower Silesia. Part IMagdalena Rogalska0Department of Construction Methods and Management; Faculty of Civil Engineering and Architecture; Lublin University of Technology The article is the first part of the series „Prediction construction and assembly production in Lower Silesia.” It was assumed that salary of employees will be one of the independent variables to determine the volume of production. Salaries of employees was predicted, using multiple regression and autoregressive moving average SARIMA methods. An analysis of the results was carried out. The errors ME, MAE, MPE, MAPE and Theil coefficients I, I2, I12, I22, I32 were calculated. Multiple regression equation with 12 predictors was set. Predictors were selected from among the 53 independent variables. Forecasted data were obtained for construction and assembly production prediction. https://ph.pollub.pl/index.php/bia/article/view/2224predictionmultiple regressionSARIMAsalaries of employees |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Magdalena Rogalska |
spellingShingle |
Magdalena Rogalska Prediction of construction and assembly production in the province of Lower Silesia. Part I Budownictwo i Architektura prediction multiple regression SARIMA salaries of employees |
author_facet |
Magdalena Rogalska |
author_sort |
Magdalena Rogalska |
title |
Prediction of construction and assembly production in the province of Lower Silesia. Part I |
title_short |
Prediction of construction and assembly production in the province of Lower Silesia. Part I |
title_full |
Prediction of construction and assembly production in the province of Lower Silesia. Part I |
title_fullStr |
Prediction of construction and assembly production in the province of Lower Silesia. Part I |
title_full_unstemmed |
Prediction of construction and assembly production in the province of Lower Silesia. Part I |
title_sort |
prediction of construction and assembly production in the province of lower silesia. part i |
publisher |
Lublin University of Technology |
series |
Budownictwo i Architektura |
issn |
1899-0665 2544-3275 |
publishDate |
2012-12-01 |
description |
The article is the first part of the series „Prediction construction and assembly production in Lower Silesia.” It was assumed that salary of employees will be one of the independent variables to determine the volume of production. Salaries of employees was predicted, using multiple regression and autoregressive moving average SARIMA methods. An analysis of the results was carried out.
The errors ME, MAE, MPE, MAPE and Theil coefficients I, I2, I12, I22, I32 were calculated. Multiple regression equation with 12 predictors was set. Predictors were selected from among the 53 independent variables. Forecasted data were obtained for construction and assembly production prediction.
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topic |
prediction multiple regression SARIMA salaries of employees |
url |
https://ph.pollub.pl/index.php/bia/article/view/2224 |
work_keys_str_mv |
AT magdalenarogalska predictionofconstructionandassemblyproductionintheprovinceoflowersilesiaparti |
_version_ |
1724330801959534592 |