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Searching Parsimonious Solutions with GA-PARSIMONY and XGBoost in High-Dimensional Databases.

, , , , and . SOCO-CISIS-ICEUTE, volume 527 of Advances in Intelligent Systems and Computing, page 201-210. (2016)

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Stacking ensemble with parsimonious base models to improve generalization capability in the characterization of steel bolted components., , , , and . Appl. Soft Comput., (2018)Estimation of Daily Global Horizontal Irradiation Using Extreme Gradient Boosting Machines., , , and . SOCO-CISIS-ICEUTE, volume 527 of Advances in Intelligent Systems and Computing, page 105-113. (2016)Analysis of Spanish Radiometric Networks with the Novel Bias-Based Quality Control (BQC) Method., , , and . Sensors, 19 (11): 2483 (2019)Artificial Intelligence Models for Assessing the Evaluation Process of Complex Student Projects., , , and . IEEE Trans. Learn. Technol., 16 (5): 694-707 (October 2023)Hybrid Modelling of Multilayer Perceptron Ensembles for Predicting the Response of Bolted Lap Joints., , , and . Logic Journal of the IGPL, 23 (3): 451-462 (2015)Outlier Detection and Data Cleaning in Multivariate Non-Normal Samples: The PAELLA Algorithm., , , and . Data Min. Knowl. Discov., 9 (2): 171-187 (2004)Application of Genetic Algorithms to Optimize a Truncated Mean k-Nearest Neighbours Regressor for Hotel Reservation Forecasting., , , and . HAIS (1), volume 7208 of Lecture Notes in Computer Science, page 79-90. Springer, (2012)GA-PARSIMONY: A GA-SVR approach with feature selection and parameter optimization to obtain parsimonious solutions for predicting temperature settings in a continuous annealing furnace., , , , and . Appl. Soft Comput., (2015)Improving Hotel Room Demand Forecasting with a Hybrid GA-SVR Methodology Based on Skewed Data Transformation, Feature Selection and Parsimony Tuning., , , , and . HAIS, volume 9121 of Lecture Notes in Computer Science, page 632-643. Springer, (2015)Hybrid Intelligent Parsimony Search in Small High-Dimensional Datasets., , , and . HAIS, volume 14001 of Lecture Notes in Computer Science, page 384-396. Springer, (2023)