- F.C. Goldstein, and H. S. Levin, “Disorders of reasoning and problem-solving ability,” Guilford Press, 1987.
- R. Yager, “Bidirectional possibilistic dominance in uncertain decision making,” Knowledge-Based Systems, (133): 269–277, 2017.
- Simon, “Making Management Decisions: The Role of Intuition and Emotion,” The Academy of Management Executive, 1(1), 1987.
- Lee, P. Newman and R. Price, “Decision making in organisations,” Financial Times/Pitman Pub, 1999.
- Zopounidis and M. Doumpos, “Multiple Criteria Decision Making,” Springer International Publishing, 2017.
- L. Saaty, “The analytic hierarchy process : planning, priority setting, resource allocation,” McGraw-Hill International Book Co., 1980.
- Dharani Kumari, B. Shylaja, “AMGRP: AHP-based Multimetric Geographical Routing Protocol for Urban environment of VANETs,” Journal of King Saud University - Computer and Information Sciences, 31(1):72–81, 2019.
- Salgado, C. Hernandez, V. Molina, F. Beltran-Molina, “Intelligent Algorithm for Spectrum Mobility in Cognitive Wireless Networks,” Procedia Computer Science, 83, 278–283, 2016.
- Nayak, C. Tripathy, “Deadline sensitive lease scheduling in cloud computing environment using AHP,” Journal of King Saud University - Computer and Information Sciences, 30(2): 152–163, 2018.
- Moshref Javadi, Z. Azmoon, Z. (2011). “Ranking branches of System Group company in Terms of acceptance preparation of electronic Customer Relationship Management using AHP method,”Procedia Computer Science, 3: 1243–1248, 2011.
- Chang, H. Ishii, “Fuzzy Multiple Criteria Decision-Making Approach to Assess the Project Quality Management in Project,” Procedia Computer Science, 22: 928–936, 2013.
- Byun, R. Chang, M. Park, H. Son, C.Kim, “Prioritizing Community-Based Intervention Programs for Improving Treatment Compliance of Patients with Chronic Diseases: Applying an Analytic Hierarchy Process,” Int. J. Environ. Res. Public Health, 18: 455, 2021.
- Sudaryono, U. Rahardja, Masaeni, “Decision Support System for Ranking of Students in Learning Management System (LMS) Activities using Analytical Hierarchy Process (AHP) Method,” Phys.: Conf. Ser. 1477: 022022, 2020.
- Kim, Y. Kim, H. Yi, “Fuzzy Analytic Hierarchy Process-Based Mobile Robot Path Planning,” Electronics 9:290, 2020.
- Meyer, V. Noblet, C. Mazzara, C., A. Lallement, “Survey on deep learning for radiotherapy. Computers in Biology and Medicine,” 98:126–146, 2018.
- Jin, X. Yu, X. Wang,Y. Bai, T. Su, J. Kong, “Deep Learning Predictor for Sustainable Precision Agriculture Based on Internet of Things System,” Sustainability,12:1433, 2020.
- Minaee, Y. Y. Boykov, F. Porikli, A. J. Plaza, N. Kehtarnavaz and D. Terzopoulos, "Image Segmentation Using Deep Learning: A Survey," in IEEE Transactions on Pattern Analysis and Machine Intelligence,2021.
- Diro, N. Chilamkurti, “Distributed attack detection scheme using deep learning approach for Internet of Things,” Future Generation Computer Systems, 82:761–768, 2018.
- Kuo, S. Chi, S. Kao, “A decision support system for selecting convenience store location through integration of fuzzy AHP and artificial neural network,” Computers in Industry, 47(2): 199–214,2002.
- Tang, N. Hakim, W. Khaksar, M. Ariffin, S. Sulaiman, P. Pah, “A Hybrid Method using Analytic Hierarchical Process and Artificial Neural Network for Supplier Selection,” International Journal of Innovation, Management and Technology, 4(1): 109–111, 2013.
- Farahani, M. Momeni, N. Sayyed Amiri, “Car Sales Forecasting Using Artificial Neural Networks and Analytical Hierarchy Process,” The Fifth International Conference on Data Analytics, 57–62, 2016.
- Kabir, M. Hasin, “Multi-criteria inventory classification through integration of fuzzy analytic hierarchy process and artificial neural network,” International Journal of Industrial and Systems Engineering, 14(1): 74, 2013.
- Kar, “A hybrid group decision support system for supplier selection using analytic hierarchy process, fuzzy set theory and neural network,” Journal of Computational Science, 6:23–33, 2015.
- Ilunga, “Analytic Hierarchy Process (AHP) in selecting rainfall forecasting models,” Proceedings of the 20th World Multi-Conference on Systemics, Cybernetics and Informatics, 225–229, 2016.
- Bengio, O. Delalleau, and N. Roux, “The Curse of Highly Variable Functions for Local Kernel Machines,” Proceedings of the 18th International Conference on Neural Information Processing Systems, 107–114, 2007.
- Zou, X. Mi, P. Tighe, G. Koch, F. Zou, “On kernel machine learning for propensity score estimation under complex confounding structures,”. Pharmaceutical Statistics. 1– 13, 2021.
- Liu, P. Sun, N.Wergeles, Y. Shang, “A survey and performance evaluation of deep learning methods for small object detection,” Expert Systems with Applications, 172, 114602, 2021.
- Wang, Q. Lai, H. Fu, J. Shen, H. Ling and R. Yang, "Salient Object Detection in the Deep Learning Era: An In-depth Survey," in IEEE Transactions on Pattern Analysis and Machine Intelligence, 2021.
- Dhillon, G. Verma, “Convolutional neural network: a review of models, methodologies and applications to object detection,” Prog Artif Intell, 9: 85–112, 2020.
- Glorot, Y. Bengio, “Understanding the difficulty of training deep feedforward neural networks,” Proceedings of the Thirteenth International Conference on Artificial Intelligence and Statistics, 249–256, 2010.
- Cireşan, U. Meier, L. Gambardella, J. Schmidhuber, “Deep, Big, Simple Neural Nets for Handwritten Digit Recognition,” Neural Computation, 22 (12): 3207–3220, 2010.
- Sabzekar and S.M.H. Hasheminejad, “Robust regression using support vector regressions,” Chaos, Solitons and Fractals, 14, 110738, 2021.
- Wilcoxon, “Individual Comparisons by Ranking Methods,” pp. 196–202, 1992, doi: 10.1007/978-1-4612-4380-9_16.
|