A kernel-based dynamic ensemble approach for classifying unbalanced data with overlapping classes.

Machine Learning


  • Spelmen, VS & Porkodi, R. A review on handling unbalanced data. 2018 International Conference on Current Trends Towards Integrated Technologies (ICCTCT), 1–11 (IEEE, 2018).

  • Bhat, KA & Sofi, SA Class imbalance problem: Taxonomy, open challenges, applications, and state-of-the-art solutions. China News (2024).

  • Ma, T., Lu, S., Jiang, C. Membership-based resampling and cleaning algorithm for multiclass imbalanced duplicate data. expert system. application 240122565 (2024).

    Article Google Scholar

  • Castro, C., Moossen, M., Riff, MC A collaborative framework based on local search and constraint programming for solving discrete global optimization. Brazilian Symposium on Artificial Intelligence, 93–102 (Springer, 2004).

  • He, H. & Garcia, E.A. Learning from imbalanced data. IEEE Trans. Please know. data engineering twenty one1263–1284 (2009).

    Article Google Scholar

  • Fernandez, A. Learning from other imbalanced datasets, vol. 10 (Springer, 2018).

  • López, V., Fernández, A., García, S., Palade, V. & Herrera, F. Insights into classification with imbalanced data: Empirical results and current trends in the use of data-specific characteristics. Let me know. Science. 250113–141 (2013).

    Article Google Scholar

  • Johnson, JM & Khoshgoftaar, TM A survey on deep learning with class imbalance. J. Big Data 61–54 (2019).

    Article Google Scholar

  • Kumar, A., Singh, D. & Shankar Yadav, R. How to handle class overlap in disequilibrium domains: A comprehensive survey. Multimedia Tools and Applications 1–48 (2024).

  • Ahmed, Z., Issac, B. & Das, S. Ok-nb: Enhanced optical and k-naive Bayes classifiers for imbalanced classification with overlap. IEEE Access (2024).

  • Chen, W., Yang, K., Yu, Z., Shi, Y., Chen, C. Research on unbalanced learning: Current research, applications, and future directions. Artif. intelligence. pastor 571–51 (2024).

    Article Google Scholar

  • Amiri, Z., Heidari, A., Navimipour, NJ, Unal, M. & Mousavi, A. Adventures in data analysis: A systematic review of deep learning techniques for pattern recognition in cyber, physical, and social systems. multimedia tool application 8322909–22973 (2024).

    Article Google Scholar

  • Elmdoost-gashti, M., Shafiee, M., Bozorgi-Amiri, A. Enhance the resilience of marine propulsion systems by employing machine learning technology to predict failures and prioritize maintenance activities. J. Marine Engineering Technology. twenty three18–32 (2024).

    Article Google Scholar

  • Lee, Y et al. A density-based discriminant non-negative representation model for imbalanced classification. neural processes. Let. 5695 (2024).

    Article Google Scholar

  • Ma, X et al. Impact of data resampling for deep learning-based log anomaly detection: Insights and recommendations. arXiv preprint arXiv:2405.03489 (2024).

  • Lee, Y et al. Complemented subspace-based weighted cooperative representation models for unbalanced learning. Applied soft computing. 153111319 (2024).

    Article Google Scholar

  • Tsai, C.-F., Chen, K.-C. & Lin, W.-C. Combining feature selection with data oversampling for multiclass imbalanced datasets. Applied soft computing. 153111267 (2024).

    Article Google Scholar

  • Branco, P., Torgo, L., Ribeiro, R. P. A survey of predictive modeling for unbalanced domains. ACM Comput. survive. (CSUR) 491–50 (2016).

    Article Google Scholar

  • Saudi Arabia, Besar, JA Single feature imbalance classification on ensemble learning methods for efficient real-time malware detection. Intelligent Systems of Computing and Informatics, 23–46 (CRC Press, 2024).

  • Lee, Y et al. Research on optimization of multiclass land cover classification using deep learning using multispectral images. land 13603 (2024).

    Article Google Scholar

  • Singh, H., Kaur, M., and Singh, B. A hybrid feature weighting and selection-based strategy for classifying high-dimensional and unbalanced medical data. Neural Computing and Applications 1–18 (2024).

  • Majumdar, A., Bakirov, R., Hodges, D., McCullagh, S. & Rees, T. A multiseason machine learning approach to examining the relationship between training load and injuries in professional soccer. J.Sports analyst. 1047–65 (2024).

    Article Google Scholar

  • Quintián, H. & Corchado, E. Hais 2021 Conference Special Issue on Hybrid Artificial Intelligence Systems. Neurocomputing (2024).

  • Sahid, MA, Babar, MUH & Uddin, MP Predictive modeling of multiclass diabetes using machine learning and filtering of Iraqi diabetes data dynamics. PLoS ONE 19e0300785 (2024).

    Article CAS PubMed PubMed Central Google Scholar

  • Wang, J., Mao, X., Liu, Z., amp et al. Three-dimensional mineral prospect mapping considering structural rehabilitation of Daningzhuang gold deposit in eastern China. Ore Geology Review 105860 (2024).

  • Zhao, W.X., Liu, J., Ren, R., amp et al. Dense text retrieval based on pre-trained language models: A survey. ACM Transactions on Information Systems 42, 1–60 (2024).

  • Sun, Y., Pang, S., Zhang, Y. Innovative rock identification enhancement with circulation transformer model using well logging data. Geoenergy Science and Engineering 213015 (2024).

  • Xu, C., Zhu, Y., Zhu, P., amp et al. A meta-learning-based sample identification framework for improving dynamic selection of classifiers under label noise. Knowledge-Based Systems 295, 111811 (2024).

  • Wang, F., Tian, ​​D. & Carroll, M. Customized deep learning for precipitation bias correction and downscaling. Earth scientist. Model development. 16535–556 (2023).

    Article ADS Google Scholar

  • Zhou, X., Cheng, S., Zhu, M., amp et al. A state-of-the-art survey of data mining-based fraud detection and credit scoring. MATEC Web of Conferences, vol. 189, 03002 (EDP Science, 2018).

  • Tao, X., Li, Q., Guo, W., amp et al. Cost-sensitive ensemble of self-adaptive cost weight-based support vector machines for imbalanced data classification. Information Science 487, 31–56 (2019).

  • Mqadi, N., Naicker, N., Adeliyi, T. A smote-based oversampling datapoint approach to solve the credit card data imbalance problem in financial fraud detection. internal. J. Compute. digital system 10277–286 (2021).

    Article Google Scholar

  • Qu, S., Fang, J., Zhao, S., amp et al. Association of dietary inflammatory index with low estimated glomerular filtration rate, albuminuria and chronic kidney disease in adults: Results from NHANES 2011–2018. Nutrition, Metabolism, and Cardiovascular Disease 34, 1036–1045 (2024).

  • Jiang, Z., Lu, Y., Zhao, L., amp et al. A post-processing framework for class imbalance learning in transductive settings. Expert Systems and Applications 249, 123832 (2024).

  • Chen, C. T., Lee, C., Huang, S. H., amp et al. Credit card fraud detection with intelligent sampling and self-supervised learning. ACM Transactions on Intelligent Systems and Technology 15, 1–29 (2024).

  • Xu, Y. & Zhou, M. A fast computational method based on double local conditional probabilities for approximation regions of local rough sets. Intelligent & Fuzzy Systems Journal 1–13 (2024). Preprint.

  • Vairetti, C., Assadi, JL & Maldonado, S. Efficient hybrid oversampling and intelligent undersampling for imbalanced big data classification. expert system. application 246123149 (2024).

    Article Google Scholar

  • Malhotra, R., Saini, BS and Gupta, S. Survival classification of gliomas by a novel enhancement-based strategy for class overlap of radiomics features. expert system. application 240122320 (2024).

    Article Google Scholar

  • Abd Elrahman, M., Ismail, M., Hassanien, AE Extensive review on class imbalance learning techniques. Applied soft computing. 143110415. https://doi.org/10.1016/j.asoc.2023.110415 (2023).

    Article Google Scholar

  • Author unknown. On the class overlap problem in imbalanced data classification. Knowledge-Based Systems 2021, 10.1016/j.knosys.2020.106631.

  • Author unknown. Resampling approaches to address class imbalance: A review from a data perspective. Big Data Journal (2025).

  • Abd Elrahman, M., Ismail, M., Hassanien, AE Extensive review on class imbalance learning techniques. Applied soft computing. https://doi.org/10.1016/j.asoc.2023.110415 (2023).

    Article Google Scholar

  • Aswathanarayana, SH and Kanipakapatnam, SK An effective approach to detect melanoma using semantic mathematical model and modified Golden Jackal optimization algorithm. International Journal of Intelligent Engineering & Systems 17 (2024).

  • Yang, M., Zhang, Y.-X., Wang, X., Min, F. Multi-instance ensemble learning using discriminative bags. IEEE Trans. system. Male Cybernet. system. 525456–5467. https://doi.org/10.1109/TSMC.2021.3125040 (2021).

    Article ADS Google Scholar

  • Baz, A., Logeshwaran, J., Natarajan, Y., amp et al. A deep fuzzy net approach for energy efficiency optimization in smart grids. Applied Soft Computing 161, 111724 (2024).

  • Chen, H., Wang, T., Montzka, C., amp et al. Towards improving multi-source daily precipitation ensembles via joint machine learning classification and regression. Atmospheric Research 304, 107385 (2024).

  • Adnan, M., Imam, MO, Javed, MF, amp et al. Improving spam email classification accuracy using ensemble techniques: A stacking approach. International Journal of Information Security 23, 505–517 (2024).



  • Source link