Novel Ensemble Landslide Predictive Models Based on the Hyperpipes Algorithm: A Case Study in the Nam Dam Commune, Vietnam
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Nadhir Al-Ansari | Trung Hieu Tran | Binh Thai Pham | Duc Anh Nguyen | Abolfazl Jaafari | Indra Prakash | Duy Huu Nguyen | Quoc Cuong Tran | Lanh Si Ho | Hiep Van Le | Duc Do Minh | Duc Dao Minh | Duc Tung Van | B. Pham | Indra Prakash | A. Jaafari | H. V. Le | N. Al‐Ansari | D. Nguyen | D. H. Nguyen | Q. Tran | T. Tran | D. Minh
[1] Yoram Singer,et al. Improved Boosting Algorithms Using Confidence-rated Predictions , 1998, COLT' 98.
[2] Robert C. Holte,et al. Very Simple Classification Rules Perform Well on Most Commonly Used Datasets , 1993, Machine Learning.
[3] Raymond J. Mooney,et al. Creating diversity in ensembles using artificial data , 2005, Inf. Fusion.
[4] L. Highland,et al. Environmental Impact of Landslides , 2009 .
[5] Ian H. Witten,et al. The WEKA data mining software: an update , 2009, SKDD.
[6] Hui Li,et al. AdaBoost ensemble for financial distress prediction: An empirical comparison with data from Chinese listed companies , 2011, Expert Syst. Appl..
[7] S. Z. Mousavi,et al. GIS-based spatial prediction of landslide susceptibility using logistic regression model , 2011 .
[8] Olgierd Unold,et al. Mining fuzzy rules using an Artificial Immune System with fuzzy partition learning , 2011, Appl. Soft Comput..
[9] Xiuquan Qiao,et al. Three Categories Customer Churn Prediction Based on the Adjusted Real Adaboost , 2011, Commun. Stat. Simul. Comput..
[10] Phillip Stafford,et al. Comparative study of classification algorithms for immunosignaturing data , 2012, BMC Bioinformatics.
[11] Mahesh Panchal,et al. A Review on Diverse Ensemble Methods for Classification , 2012 .
[12] D. Petley. Global patterns of loss of life from landslides , 2012 .
[13] Andrzej J. Bojarski,et al. A multidimensional analysis of machine learning methods performance in the classification of bioactive compounds , 2013 .
[14] Veronica Tofani,et al. Landslide susceptibility estimation by random forests technique: sensitivity and scaling issues , 2013 .
[15] Biswajeet Pradhan,et al. A comparative study on the predictive ability of the decision tree, support vector machine and neuro-fuzzy models in landslide susceptibility mapping using GIS , 2013, Comput. Geosci..
[16] Eung-Joo Lee,et al. A Novel Multi-view Face Detection Method Based on Improved Real Adaboost Algorithm , 2013, KSII Trans. Internet Inf. Syst..
[17] H. Shahabi,et al. Landslide susceptibility mapping at central Zab basin, Iran: a comparison between analytical hierarchy process, frequency ratio and logistic regression models , 2014 .
[18] Biswajeet Pradhan,et al. A novel ensemble decision tree-based CHi-squared Automatic Interaction Detection (CHAID) and multivariate logistic regression models in landslide susceptibility mapping , 2014, Landslides.
[19] A. Trigila,et al. Comparison of Logistic Regression and Random Forests techniques for shallow landslide susceptibility assessment in Giampilieri (NE Sicily, Italy) , 2015 .
[20] A. Jaafari,et al. Planning road networks in landslide-prone areas: A case study from the northern forests of Iran , 2015 .
[21] I. Ilia,et al. Applying weight of evidence method and sensitivity analysis to produce a landslide susceptibility map , 2016, Landslides.
[22] Dieu Tien Bui,et al. Landslide Susceptibility Assessment at a Part of Uttarakhand Himalaya, India using GIS – based Statistical Approach of Frequency Ratio Method , 2015 .
[23] A. Jaafari,et al. Modeling erosion and sediment delivery from unpaved roads in the north mountainous forest of Iran , 2015 .
[24] D. M. Duc,et al. Landslide susceptibility mapping by combining the analytical hierarchy process and weighted linear combination methods: a case study in the upper Lo River catchment (Vietnam) , 2016, Landslides.
[25] Majid Shadman Roodposhti,et al. Fuzzy Shannon Entropy: A Hybrid GIS-Based Landslide Susceptibility Mapping Method , 2016, Entropy.
[26] Nguyen Quoc Thanh,et al. Spatial prediction of rainfall-induced landslides for the Lao Cai area (Vietnam) using a hybrid intelligent approach of least squares support vector machines inference model and artificial bee colony optimization , 2017, Landslides.
[27] Aytug Onan,et al. A multiobjective weighted voting ensemble classifier based on differential evolution algorithm for text sentiment classification , 2016, Expert Syst. Appl..
[28] Qiqing Wang,et al. A comparative study on the landslide susceptibility mapping using evidential belief function and weights of evidence models , 2016, Journal of Earth System Science.
[29] Guifang Zhang,et al. Integration of the Statistical Index Method and the Analytic Hierarchy Process technique for the assessment of landslide susceptibility in Huizhou, China , 2016 .
[30] B. Pradhan,et al. GIS-based modeling of rainfall-induced landslides using data mining-based functional trees classifier with AdaBoost, Bagging, and MultiBoost ensemble frameworks , 2016, Environmental Earth Sciences.
[31] Yanli Wu,et al. Application of statistical index and index of entropy methods to landslide susceptibility assessment in Gongliu (Xinjiang, China) , 2016, Environmental Earth Sciences.
[32] Joaquín B. Ordieres Meré,et al. Prediction of daily maximum ozone threshold exceedances by preprocessing and ensemble artificial intelligence techniques , 2016 .
[33] Dieu Tien Bui,et al. A novel hybrid artificial intelligence approach for flood susceptibility assessment , 2017, Environ. Model. Softw..
[34] D. Bui,et al. Shallow landslide susceptibility assessment using a novel hybrid intelligence approach , 2017, Environmental Earth Sciences.
[35] Dieu Tien Bui,et al. Hybrid integration of Multilayer Perceptron Neural Networks and machine learning ensembles for landslide susceptibility assessment at Himalayan area (India) using GIS , 2017 .
[36] Dieu Tien Bui,et al. Landslide Susceptibility Assessment Using Bagging Ensemble Based Alternating Decision Trees, Logistic Regression and J48 Decision Trees Methods: A Comparative Study , 2017, Geotechnical and Geological Engineering.
[37] Javad Rezaeian,et al. Prediction of Slope Failures in Support of Forestry Operations Safety , 2017 .
[38] K. Solaimani,et al. Mapping landslide susceptibility with frequency ratio, statistical index, and weights of evidence models: a case study in northern Iran , 2017, Environmental Earth Sciences.
[39] H. Sonmez,et al. Landslide susceptibility mapping at Ovacık-Karabük (Turkey) using different artificial neural network models: comparison of training algorithms , 2019, Bulletin of Engineering Geology and the Environment.
[40] Wei Chen,et al. A novel hybrid artificial intelligence approach based on the rotation forest ensemble and naïve Bayes tree classifiers for a landslide susceptibility assessment in Langao County, China , 2017 .
[41] A. Zhu,et al. A novel hybrid integration model using support vector machines and random subspace for weather-triggered landslide susceptibility assessment in the Wuning area (China) , 2017, Environmental Earth Sciences.
[42] Binh Thai Pham,et al. Machine Learning Methods of Kernel Logistic Regression and Classification and Regression Trees for Landslide Susceptibility Assessment at Part of Himalayan Area, India , 2018 .
[43] H. Shahabi,et al. Novel forecasting approaches using combination of machine learning and statistical models for flood susceptibility mapping. , 2018, Journal of environmental management.
[44] Indra Prakash,et al. Landslide susceptibility modelling using different advanced decision trees methods , 2018, Civil Engineering and Environmental Systems.
[45] Wei Chen,et al. Land Subsidence Susceptibility Mapping in South Korea Using Machine Learning Algorithms , 2018, Sensors.
[46] A. Zhu,et al. GIS-based landslide susceptibility evaluation using a novel hybrid integration approach of bivariate statistical based random forest method , 2018 .
[47] Wei Chen,et al. Hybrid Integration Approach of Entropy with Logistic Regression and Support Vector Machine for Landslide Susceptibility Modeling , 2018, Entropy.
[48] Himan Shahabi,et al. A novel hybrid approach of Bayesian Logistic Regression and its ensembles for landslide susceptibility assessment , 2018, Geocarto International.
[49] B. Pham,et al. A comparative assessment of decision trees algorithms for flash flood susceptibility modeling at Haraz watershed, northern Iran. , 2018, The Science of the total environment.
[50] M. Panahi,et al. Social Vulnerability Assessment Using Artificial Neural Network (ANN) Model for Earthquake Hazard in Tabriz City, Iran , 2018, Sustainability.
[51] Hossein Shafizadeh-Moghadam,et al. Big data in Geohazard; pattern mining and large scale analysis of landslides in Iran , 2018, Earth Science Informatics.
[52] Binh Thai Pham,et al. Wildfire spatial pattern analysis in the Zagros Mountains, Iran: A comparative study of decision tree based classifiers , 2018, Ecol. Informatics.
[53] Ambrish Kumar Mahajan,et al. A comparative assessment of information value, frequency ratio and analytical hierarchy process models for landslide susceptibility mapping of a Himalayan watershed, India , 2019, Bulletin of Engineering Geology and the Environment.
[54] V. Singh,et al. Mapping Groundwater Potential Using a Novel Hybrid Intelligence Approach , 2018, Water Resources Management.
[55] Biswajeet Pradhan,et al. Novel GIS Based Machine Learning Algorithms for Shallow Landslide Susceptibility Mapping , 2018, Sensors.
[56] Michele Calvello,et al. Territorial early warning systems for rainfall-induced landslides , 2018 .
[57] Xiaojing Wang,et al. Landslide Susceptibility Modeling Based on GIS and Novel Bagging-Based Kernel Logistic Regression , 2018, Applied Sciences.
[58] Wei Chen,et al. Spatial prediction of landslide susceptibility using data mining-based kernel logistic regression, naive Bayes and RBFNetwork models for the Long County area (China) , 2019, Bulletin of Engineering Geology and the Environment.
[59] A. Zhu,et al. Novel hybrid artificial intelligence approach of bivariate statistical-methods-based kernel logistic regression classifier for landslide susceptibility modeling , 2018, Bulletin of Engineering Geology and the Environment.
[60] Ionut Cristi Nicu,et al. GIS-based evaluation of diagnostic areas in landslide susceptibility analysis of Bahluieț River Basin (Moldavian Plateau, NE Romania). Are Neolithic sites in danger? , 2018, Geomorphology.
[61] A. Jaafari. LiDAR-supported prediction of slope failures using an integrated ensemble weights-of-evidence and analytical hierarchy process , 2018, Environmental Earth Sciences.
[62] Tri Dev Acharya,et al. Landslide susceptibility mapping using J48 Decision Tree with AdaBoost, Bagging and Rotation Forest ensembles in the Guangchang area (China) , 2018 .
[63] Taskin Kavzoglu,et al. Machine Learning Techniques in Landslide Susceptibility Mapping: A Survey and a Case Study , 2018, Landslides: Theory, Practice and Modelling.
[64] Binh Thai Pham,et al. GIS Based Novel Hybrid Computational Intelligence Models for Mapping Landslide Susceptibility: A Case Study at Da Lat City, Vietnam , 2019 .
[65] Wei Chen,et al. Flood susceptibility mapping in Dingnan County (China) using adaptive neuro-fuzzy inference system with biogeography based optimization and imperialistic competitive algorithm. , 2019, Journal of environmental management.
[66] Dieu Tien Bui,et al. Meta optimization of an adaptive neuro-fuzzy inference system with grey wolf optimizer and biogeography-based optimization algorithms for spatial prediction of landslide susceptibility , 2019, CATENA.
[67] Hossein Moayedi,et al. A Novel Swarm Intelligence—Harris Hawks Optimization for Spatial Assessment of Landslide Susceptibility , 2019, Sensors.
[68] Dieu Tien Bui,et al. A comparative study of support vector machine and logistic model tree classifiers for shallow landslide susceptibility modeling , 2019, Environmental Earth Sciences.
[69] Vijay P. Singh,et al. Effects of drought on vegetative cover changes: Investigating spatiotemporal patterns , 2019, Extreme Hydrology and Climate Variability.
[70] Shouyun Liang,et al. Landslide susceptibility assessment using evidential belief function, certainty factor and frequency ratio model at Baxie River basin, NW China , 2019 .
[71] Giovanni Gigli,et al. Forecasting the time of failure of landslides at slope-scale: A literature review , 2019, Earth-Science Reviews.
[72] Binh Thai Pham,et al. Application of artificial neural networks for predicting tree survival and mortality in the Hyrcanian forest of Iran , 2019, Comput. Electron. Agric..
[73] Wei Chen,et al. GIS-Based Evaluation of Landslide Susceptibility Models Using Certainty Factors and Functional Trees-Based Ensemble Techniques , 2019, Applied Sciences.
[74] B. Pham,et al. Assessment of advanced random forest and decision tree algorithms for modeling rainfall-induced landslide susceptibility in the Izu-Oshima Volcanic Island, Japan. , 2019, The Science of the total environment.
[75] Zhihao Xu,et al. Novel Entropy and Rotation Forest-Based Credal Decision Tree Classifier for Landslide Susceptibility Modeling , 2019, Entropy.
[76] Bahareh Kalantar,et al. Application of rotation forest with decision trees as base classifier and a novel ensemble model in spatial modeling of groundwater potential , 2019, Environmental Monitoring and Assessment.
[77] Jie Dou,et al. New Ensemble Models for Shallow Landslide Susceptibility Modeling in a Semi-Arid Watershed , 2019, Forests.
[78] D. Bui,et al. Hybrid Machine Learning Approaches for Landslide Susceptibility Modeling , 2019, Forests.
[79] D. Bui,et al. Uncertainties of prediction accuracy in shallow landslide modeling: Sample size and raster resolution , 2019, CATENA.
[80] Francisco Gutiérrez,et al. Sinkhole susceptibility mapping: A comparison between Bayes‐based machine learning algorithms , 2019, Land Degradation & Development.
[81] Biswajeet Pradhan,et al. SWPT: An automated GIS-based tool for prioritization of sub-watersheds based on morphometric and topo-hydrological factors , 2019, Geoscience Frontiers.
[82] Biswajeet Pradhan,et al. Shallow Landslide Prediction Using a Novel Hybrid Functional Machine Learning Algorithm , 2019, Remote. Sens..
[83] Himan Shahabi,et al. Hybrid artificial intelligence models based on a neuro-fuzzy system and metaheuristic optimization algorithms for spatial prediction of wildfire probability , 2019, Agricultural and Forest Meteorology.
[84] Saro Lee,et al. Modelling gully-erosion susceptibility in a semi-arid region, Iran: Investigation of applicability of certainty factor and maximum entropy models. , 2019, The Science of the total environment.
[85] Nadhir Al-Ansari,et al. Groundwater Potential Mapping Combining Artificial Neural Network and Real AdaBoost Ensemble Technique: The DakNong Province Case-study, Vietnam , 2020, International journal of environmental research and public health.
[86] Wei Chen,et al. Hybrid Computational Intelligence Methods for Landslide Susceptibility Mapping , 2020, Symmetry.
[87] Wei Chen,et al. GIS-Based Gully Erosion Susceptibility Mapping: A Comparison of Computational Ensemble Data Mining Models , 2020, Applied Sciences.
[88] John J. Clague,et al. Shallow Landslide Susceptibility Mapping by Random Forest Base Classifier and Its Ensembles in a Semi-Arid Region of Iran , 2020 .
[89] Jie Dou,et al. Spatial Proximity-Based Geographically Weighted Regression Model for Landslide Susceptibility Assessment: A Case Study of Qingchuan Area, China , 2020 .
[90] Binh Thai Pham,et al. Ensemble modeling of landslide susceptibility using random subspace learner and different decision tree classifiers , 2020, Geocarto International.
[91] Nadhir Al-Ansari,et al. Soft Computing Ensemble Models Based on Logistic Regression for Groundwater Potential Mapping , 2020, Applied Sciences.
[92] Van-Manh Pham,et al. An optimal search for neural network parameters using the Salp swarm optimization algorithm: a landslide application , 2020 .