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      Comparison of Random Forest and Gradient Boosting Machine Models for Predicting Demolition Waste Based on Small Datasets and Categorical Variables.

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          Abstract

          Construction and demolition waste (DW) generation information has been recognized as a tool for providing useful information for waste management. Recently, numerous researchers have actively utilized artificial intelligence technology to establish accurate waste generation information. This study investigated the development of machine learning predictive models that can achieve predictive performance on small datasets composed of categorical variables. To this end, the random forest (RF) and gradient boosting machine (GBM) algorithms were adopted. To develop the models, 690 building datasets were established using data preprocessing and standardization. Hyperparameter tuning was performed to develop the RF and GBM models. The model performances were evaluated using the leave-one-out cross-validation technique. The study demonstrated that, for small datasets comprising mainly categorical variables, the bagging technique (RF) predictions were more stable and accurate than those of the boosting technique (GBM). However, GBM models demonstrated excellent predictive performance in some DW predictive models. Furthermore, the RF and GBM predictive models demonstrated significantly differing performance across different types of DW. Certain RF and GBM models demonstrated relatively low predictive performance. However, the remaining predictive models all demonstrated excellent predictive performance at R2 values > 0.6, and R values > 0.8. Such differences are mainly because of the characteristics of features applied to model development; we expect the application of additional features to improve the performance of the predictive models. The 11 DW predictive models developed in this study will be useful for establishing detailed DW management strategies.

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          Author and article information

          Journal
          Int J Environ Res Public Health
          International journal of environmental research and public health
          MDPI AG
          1660-4601
          1660-4601
          Aug 12 2021
          : 18
          : 16
          Affiliations
          [1 ] Department of Architectural Engineering, Dankook University, Yongin 16890, Korea.
          [2 ] Department of Safety Engineering, Dongguk University-Gyeongju, Gyeongju 38066, Korea.
          Article
          ijerph18168530
          10.3390/ijerph18168530
          8392226
          34444277
          85002e7b-75a7-4879-935c-dd59dbdef8ee
          History

          boosting technique,demolition waste,waste management,predictive model,bagging technique

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