1. Latrisha, N., Mintarya, A., Jeta, N.M., Halim, A., Callista, A., Said, A., Aditya, K. (2023). Machine learning approaches in stock market prediction: A systematic literature review. Procedia Computer Science, 216, 96-102.
2. Zhou, T., Hu, Z., ,Su, Q., Xiong, W. (2023). A clustering differential evolution algorithm with neighborhood-based dual mutation operator for multimodal multiobjective optimization. Expert Systems with Applications, 216, 119438.
3. Garcia, J., Maureira, C. (2021). A KNN quantum cuckoo search algorithm applied to the multidimensional knapsack problem. Applied Soft Computing, 102, 107077.
4. Li, X., Guo, X., Tang, H., Wu, R., Liu, J. (2023). An improved cuckoo search algorithm for the hybrid flow-shop scheduling problem in sand casting enterprises considering batch processing. Computers & Industrial Engineering, 176, 108921.
5. Wang, G., Gandomi, A., Alavi, A. (2014). Stud krill herd algorithm. Neurocomputing, 128, 363-370.
6. Chuang, L., Hsiao, C., Yang, C. (2011). Chaotic particle swarm optimization for data clustering. Expert Systems with Applications, 38(12), 14555-14563.
7. Satish, G., Durga, T. (2012). Projected Clustering Using Particle Swarm Optimization. Procedia Technology, 4, 360-364.
8. Shelokar, P.S., Jayaraman, V.K., Kulkarni, B.D. (2004). An ant colony approach for clustering. Analytica Chimica Acta, 509(2), 187-195.
9. Wang, Y., Xiao, R. (2016). An ant colony based resilience approach to cascading failures in cluster supply network. Physica A: Statistical Mechanics and its Applications, 462, 150-166.
10. Ghezelbash, R., Daviran, M., Maghsoudi, A., Ghaeminejad, H., Niknezhad, M. (2023). Incorporating the genetic and firefly optimization algorithms into K-means clustering method for detection of porphyry and skarn Cu-related geochemical footprints in Baft district, Kerman, Iran. Applied Geochemistry, 148, 105538.
11. Wang, X., Wang, J. (2014). Improved Artificial Bee Colony Clustering Algorithm Based on K-means. Applied Mechanics and Materials, 556, 3852-3855.
12. Gang, Y., Yang, W., Huang, X., Ma, Q., Jiang, D. (2022). Clustering of Typical Wind Power Scenarios Based on K-Means Clustering Algorithm and Improved Artificial Bee Colony Algorithm. IEEE Access, 10, 98752-98760.
13. Lewandowski, S., Ullrich, A. (2023). Measures to reduce corporate GHG emissions: A review-based taxonomy and survey-based cluster analysis of their application and perceived effectiveness. Journal of Environmental Management, 325, 116437.
14. Li, J., Tang, Y., Hua, C., Guan, X. (2014). An improved krill herd algorithm: Krill herd with linear decreasing step. Applied Mathematics and Computation, 234, 356-367.
15. Deng, Z., Yang, J., Dong, C., Xiang, M., Qin, Y., Sun, Y. (2022). Research on economic dispatch of integrated energy system based on improved Krill Herd algorithm. Energy Reports, 8, 77-86.
16. Aakanksha, S., Chandramani, K., Siddhartha, P., Surbhi, B., Kuljeet, K., Hassan, M. (2021). Spam message detection using Danger theory and Krill herd optimization. Computer Networks, 199, 108453.
17. Niu, P., Chen, K., Ma, Y., Li, X., Liu, A., Li, G. (2017). Model turbine heat rate by fast learning network with tuning based on ameliorated krill herd algorithm. Knowledge-Based Systems, 118, 80-92.
18. Jia, H., Taheri, B. (2021). Model identification of Solid Oxide Fuel Cell using hybrid Elman Neural Network/Quantum Pathfinder algorithm. Energy Reports, 7, 3328-3337.
19. Moussa, M., Hadi, A., Niloufar, M. (2021). Training fuzzy inference system-based classifiers with Krill Herd optimization. Knowledge-Based Systems, 214, 106625.
20. Maulik, U., Sanghamitra, B. (2002). Performance evaluation of some clustering algorithms and validity indices. IEEE Transactions on pattern analysis and machine intelligence, 24(12), 1650–1654.
21. Yan, X., Zhu, Y., Zou, W., Wang, L. (2012). A new approach for data clustering using hybrid artificial bee colony algorithm. Neurocomputing, 97, 241-250.
22. Surjanovic, S., Bingham, D. (2013). Virtual Library of Simulation Experiments: Test Functions and Datasets. Retrieved Jan 13, 2023, from http://www.sfu.ca/~ssurjano.
23. Markelle, K., Rachel, L., Kolby, N. (2023). The UCI Machine Learning Repository. Retrieved Feb 10, 2023, https://archive.ics.uci.edu.