A New Predictive Method for Classification Tasks in Machine Learning: Multi-Class Multi-Label Logistic Model Tree (MMLMT)
-
Published:2024-09-12
Issue:18
Volume:12
Page:2825
-
ISSN:2227-7390
-
Container-title:Mathematics
-
language:en
-
Short-container-title:Mathematics
Author:
Ghasemkhani Bita1ORCID, Balbal Kadriye Filiz2ORCID, Birant Derya3ORCID
Affiliation:
1. Graduate School of Natural and Applied Sciences, Dokuz Eylul University, Izmir 35390, Turkey 2. Department of Computer Science, Dokuz Eylul University, Izmir 35390, Turkey 3. Department of Computer Engineering, Dokuz Eylul University, Izmir 35390, Turkey
Abstract
This paper introduces a novel classification method for multi-class multi-label datasets, named multi-class multi-label logistic model tree (MMLMT). Our approach supports multi-label learning to predict multiple class labels simultaneously, thereby enhancing the model’s capacity to capture complex relationships within the data. The primary goal is to improve the accuracy of classification tasks involving multiple classes and labels. MMLMT integrates the logistic regression (LR) and decision tree (DT) algorithms, yielding interpretable models with high predictive performance. By combining the strengths of LR and DT, our method offers a flexible and powerful framework for handling multi-class multi-label data. Extensive experiments demonstrated the effectiveness of MMLMT across a range of well-known datasets with an average accuracy of 85.90%. Furthermore, our method achieved an average of 9.87% improvement compared to the results of state-of-the-art studies in the literature. These results highlight MMLMT’s potential as a valuable approach to multi-label learning.
Reference81 articles.
1. Talaei Khoei, T., and Kaabouch, N. (2023). Machine Learning: Models, Challenges, and Research Directions. Future Internet, 15. 2. Wang, Y., Dong, H., Bai, S., Yu, Y., and Duan, Q. (2024). Image Recognition and Classification of Farmland Pests Based on Improved Yolox-tiny Algorithm. Appl. Sci., 14. 3. Xu, X., Li, J., Zhu, Z., Zhao, L., Wang, H., Song, C., Chen, Y., Zhao, Q., Yang, J., and Pei, Y. (2024). A Comprehensive Review on Synergy of Multi-Modal Data and AI Technologies in Medical Diagnosis. Bioengineering, 11. 4. Hoppe, H., Dietrich, P., Marzahn, P., Weiß, T., Nitzsche, C., Freiherr von Lukas, U., Wengerek, T., and Borg, E. (2024). Transferability of Machine Learning Models for Crop Classification in Remote Sensing Imagery Using a New Test Methodology: A Study on Phenological, Temporal, and Spatial Influences. Remote Sens., 16. 5. Maldonado-Correa, J., Valdiviezo-Condolo, M., Artigao, E., Martín-Martínez, S., and Gómez-Lázaro, E. (2024). Classification of Highly Imbalanced Supervisory Control and Data Acquisition Data for Fault Detection of Wind Turbine Generators. Energies, 17.
|
|