@ARTICLE{Singh_Sudhir_Kumar_Assessment_2023, author={Singh, Sudhir Kumar and Chakravarty, Debashish}, volume={vol. 68}, number={No 1}, journal={Archives of Mining Sciences}, pages={87-102}, howpublished={online}, year={2023}, publisher={Committee of Mining PAS}, abstract={This study aims at developing a machine learning based classification and regression-based models for slope stability analysis. 1140 different cases have been analysed using the Morgenstern price method in GeoSlope for non-homogeneous cohesive slopes as input for classification and regression-based models. Slope failures presents a serious challenge across many countries of the world. Understanding the various factors responsible for slope failure is very crucial in mitigating this problem. Therefore, different parameters which may be responsible for failure of slope are considered in this study. 9 different parameters (cohesion, specific gravity, slope angle, thickness of layers, internal angle of friction, saturation condition, wind and rain, blasting conditions and cloud burst conditions) have been identified for the purpose of this study including internal, external and factors representing the geometry of the slope has been included. Four different classification algorithms namely Random Forest, logistic regression, Support Vector Machine (SVM), and K Nearest Neighbor (KNN) has been modelled and their performances have been evaluated on several performance metrics. A similar comparison based on performance indices has been made among three different regression models Decision tree, random forest, and XGBoost regression.}, type={Article}, title={Assessment of Slope Stability using Classification and Regression Algorithms Subjected to Internal and External Factors}, URL={http://www.journals.pan.pl/Content/126864/PDF-MASTER/Archiwum-68-1-06-Singh.pdf}, doi={10.24425/ams.2023.144319}, keywords={slope stability, non-homogeneous, classification, regression}, }