4.7 Article

Strength of Stacking Technique of Ensemble Learning in Rockburst Prediction with Imbalanced Data: Comparison of Eight Single and Ensemble Models

Journal

NATURAL RESOURCES RESEARCH
Volume 30, Issue 2, Pages 1795-1815

Publisher

SPRINGER
DOI: 10.1007/s11053-020-09787-0

Keywords

Rockburst prediction; Ensemble learning; Stacking technique; Class imbalance; Outlier detection and substitution

Funding

  1. National Natural Science Foundation of China [41941018, 41807250]
  2. China Postdoctoral Science Foundation Program [2019T120686]
  3. National Key Basic Research Program of China [2015CB058102]

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This study established rockburst prediction models using the stacking technique of ensemble learning, employed three data mining techniques for data preprocessing, and compared the performance differences between single algorithms and ensemble models. The results demonstrated that this approach has unique advantages in handling imbalanced data.
Rockburst is a common dynamic geological hazard, severely restricting the development and utilization of underground space and resources. As the depth of excavation and mining increases, rockburst tends to occur frequently. Hence, it is necessary to carry out a study on rockburst prediction. Due to the nonlinear relationship between rockburst and its influencing factors, artificial intelligence was introduced. However, the collected data were typically imbalanced. Single algorithms trained by such data have low recognition for minority classes. In order to handle the problem, this paper employed stacking technique of ensemble learning to establish rockburst prediction models. In total, 246 sets of data were collected. In the preprocessing stage, three data mining techniques including principal component analysis, local outlier factor and expectation maximization algorithm were used for dimension reduction, outlier detection and outlier substitution, respectively. Then, the pre-processed data were split into a training set (75%) and a test set (25%) with stratified sampling. Based on the four classical single intelligent algorithms, namely k-nearest neighbors (KNN), support vector machine (SVM), deep neural network (DNN) and recurrent neural network (RNN), four ensemble models (KNN-RNN, SVM-RNN, DNN-RNN and KNN-SVM-DNN-RNN) were built by stacking technique of ensemble learning. The prediction performance of eight models was evaluated, and the differences between single models and ensemble models were analyzed. Additionally, a sensitivity analysis was conducted, revealing the importance of input variables on the models. Finally, the impact of class imbalance on the prediction accuracy and fitting effect of models was quantitatively discussed. The results showed that stacking technique of ensemble learning provides a new and promising way for rockburst prediction, which exhibits unique advantages especially when using imbalanced data.

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