4.7 Article

Modeling the organic matter of water using the decision tree coupled with bootstrap aggregated and least-squares boosting

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DOI: 10.1016/j.eti.2022.102419

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Water; Physic-chemical parameters; Organic matter; Modeling; Decision tree; Bootstrap aggregates; Least-squares boosting

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The purpose of this study is to investigate the use of decision tree enhanced by bootstrap aggregates and least-squares boosting in modeling the organic matter of water according to its physicochemical parameters. The results show that the Lsboost technology significantly improved the performance of the decision tree model, and the Bag technique was also found to be very effective in optimizing the decision tree model.
The purpose of the work is to investigate the use of decision tree (DT) enhanced by bootstrap aggregates (Bag) and least-squares boosting (Lsboost) in modeling the organic matter of water according to its physicochemical parameters. An entire database of 500 samples of 21 physicochemical parameters, including organic matter, was used to build the DT, DT_Bag, and DT_Lsboost models. Training data (364 data points) is resampled using a bootstrap technique to form different training datasets to train different models. The models built were validated by a dataset of 91 samples. The predicted outputs obtained from the developed DT models are then combined by simple averaging. On the other hand, the data was also boosted with the Lsboost technical aid to increase the strength of a weak learning algorithm. The model trains the first weak learner with equal weight across all data points in the training set, then trains all other weak learners based on the updated weight aimed at the validation result to minimize the squared error medium. Good agreement between the predicted and experimental organic matter concentrations for the DT_Lsboost model was obtained (the correlation coefficient for the validation dataset was 0.9992), followed by the DT-Bag model with a correlation coefficient of 0.9949. The comparison between DT, DT_Bag, and DT_Lsboost revealed the superiority of the DT_Lsboost model (the mean root of the squared errors for the dataset were 0.1295 for the DT_Lsboost, 0.1664 for the DT_Bag, and 0.5444 for the DT). These results show that Lsboost technology dramatically improved the DT model. This result is also confirmed by the results of tests on models (interpolation data of 45 points). It should also be noted that the Bag technique was also very effective in optimizing the DT model, as the results obtained with this technique were very close to the DT_Lsboost model. (C)& nbsp;2022 The Authors. Published by Elsevier B.V.& nbsp;

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