In project management it is critical to obtain accurate cost forecasts using effective methods. This study presents a Machine Learning model based on Long-Short Term Memory to forecast the project cost. The model uses the seven-dimensional feature vector, including schedule and cost performance factors and their moving averages as a predictor. Based on the cost variation patterns from the training phase, we validate the model using three hundred experiments in the testing phase. Overall, the proposed model produces more accurate cost estimates when compared to the traditional Earned Value Management index-based model.
A Machine Learning Study to Enhance Project Cost Forecasting / Inan, T.; Narbaev, T.; Hazir, O.. - ELETTRONICO. - 55:(2022), pp. 3286-3291. (Intervento presentato al convegno 10th IFAC Conference on Manufacturing Modelling, Management and Control, MIM 2022 tenutosi a France nel 2022) [10.1016/j.ifacol.2022.10.127].
A Machine Learning Study to Enhance Project Cost Forecasting
Narbaev T.;
2022
Abstract
In project management it is critical to obtain accurate cost forecasts using effective methods. This study presents a Machine Learning model based on Long-Short Term Memory to forecast the project cost. The model uses the seven-dimensional feature vector, including schedule and cost performance factors and their moving averages as a predictor. Based on the cost variation patterns from the training phase, we validate the model using three hundred experiments in the testing phase. Overall, the proposed model produces more accurate cost estimates when compared to the traditional Earned Value Management index-based model.File | Dimensione | Formato | |
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Inan et al_MIM2022_2022_ A ML study to enhance project cost forecasting.pdf
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Descrizione: In project management it is critical to obtain accurate cost forecasts using effective methods. This study presents a Machine Learning model based on Long-Short Term Memory to forecast the project cost. The model uses the seven-dimensional feature vector, including schedule and cost performance factors and their moving averages as a predictor. Based on the cost variation patterns from the training phase, we validate the model using three hundred experiments in the testing phase. Overall, the proposed model produces more accurate cost estimates when compared to the traditional Earned Value Management index- based model.
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https://hdl.handle.net/11583/2996464