2019
DOI: 10.3390/app9081621
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Random Forests and Cubist Algorithms for Predicting Shear Strengths of Rockfill Materials

Abstract: The shear strength of rockfill materials (RFM) is an important engineering parameter in the design and audit of geotechnical structures. In this paper, the predictive reliability and feasibility of random forests and Cubist models were analyzed by estimating the shear strength from the relative density, particle size, distribution (gradation), material hardness, gradation and fineness modulus, and confining (normal) stress. For this purpose, case studies of 165 rockfill samples have been applied to generate tr… Show more

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Cited by 174 publications
(75 citation statements)
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References 48 publications
(100 reference statements)
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“…The Cubist is a rule-based model that is able to generate more comprehensive predictive accuracy than conventional statistical methods with minimized risk of over fitting. It can include various predictor variables (categorical or continuous), and the importance of a variable can be automatically obtained to interpret the variable contribution mechanism in the final predictor model [140]. Deep learning algorithms such as ANN are based on the ability to learn during the training procedure in which they are presented with inputs and a set of expected outputs.…”
Section: Discussionmentioning
confidence: 99%
“…The Cubist is a rule-based model that is able to generate more comprehensive predictive accuracy than conventional statistical methods with minimized risk of over fitting. It can include various predictor variables (categorical or continuous), and the importance of a variable can be automatically obtained to interpret the variable contribution mechanism in the final predictor model [140]. Deep learning algorithms such as ANN are based on the ability to learn during the training procedure in which they are presented with inputs and a set of expected outputs.…”
Section: Discussionmentioning
confidence: 99%
“…(3) Four supervised learning methods (DT, GP, MLR, and SVM) and a metaheuristic optimization algorithm (PSO) were used for nonlinear regression modeling in this paper. Other advanced MLAs can be introduced to predict the ultimate axial capacity, such as multilayer perceptron [65,66] and random forest [67][68][69]. Some new optimization algorithms can also be used to improve model performance while reducing the operation time.…”
Section: Discussion: Future Model Improvementsmentioning
confidence: 99%
“…The procedure of developing an HHO-RF model is shown in Figure 3. Firstly, the collected database should be divided into training datasets and testing datasets with a ratio of 80% and 20% [60][61][62][63]. Then the Harris hawks optimization algorithm will be used to search the best combination of the number of variables used to grow each try (m try ) and the number of trees (n tree ) in the RF model, and the final RF model will be established.…”
Section: Hho-rf Modelmentioning
confidence: 99%