Improving Efficiency and Accuracy in Construction Sales Valuation via Random Search Optimization
The valuation of construction project sales depends on various economic variables and indices. While accurate cost
predictions support financial planning and risk management, traditional grid-search optimization-based machine learning
techniques often demand extensive computational resources for training and optimization, especially when large datasets
require comprehensive machine learning models. Recent investigations highlighted that random search optimization can
shorten the training time of ensemble machine learning methods. Nevertheless, its effectiveness for construction project
cost valuation, especially when examining model accuracy and training time, is still unclear. This research examines the
usability of random search optimization for machine learning models in construction project sales valuation and compares
it with the standard grid search approach. A large dataset with 103 inputs from 372 construction projects is used as the
basis of the investigation. Six different machine learning models are designed and optimized under grid search and random
search approaches to evaluate training time and predictive accuracy. The study results indicate that random search
optimization cuts training time by up to 70% and preserves a high level of accuracy, with the best-performing model
achieving an R? of 0.98 on the test set. These findings highlight random search optimization as a strong alternative to grid
search, providing significant computational savings without harming model performance. The study offers guidance on
effective hyperparameter tuning methods that may facilitate scalable and budget-friendly predictive models for
construction project valuation.