A broad review on class imbalance learning techniques
S Rezvani, X Wang - Applied Soft Computing, 2023 - Elsevier
The imbalanced learning issue is related to the performance of learning algorithms in the
presence of asymmetrical class distribution. Due to the complex characteristics of …
presence of asymmetrical class distribution. Due to the complex characteristics of …
FW-SMOTE: A feature-weighted oversampling approach for imbalanced classification
Abstract The Synthetic Minority Over-sampling Technique (SMOTE) is a well-known
resampling strategy that has been successfully used for dealing with the class-imbalance …
resampling strategy that has been successfully used for dealing with the class-imbalance …
A survey on multi-label feature selection from perspectives of label fusion
W Qian, J Huang, F Xu, W Shu, W Ding - Information Fusion, 2023 - Elsevier
With the rapid advancement of big data technology, high-dimensional datasets comprising
multi-label data have become prevalent in various fields. However, these datasets often …
multi-label data have become prevalent in various fields. However, these datasets often …
Noise-robust oversampling for imbalanced data classification
The class imbalance problem is characterized by an unequal data distribution in which
majority classes have a greater number of data samples than minority classes …
majority classes have a greater number of data samples than minority classes …
Graph-based multi-label disease prediction model learning from medical data and domain knowledge
In recent years, the means of disease diagnosis and treatment have been improved
remarkably, along with the continuous development of technology and science …
remarkably, along with the continuous development of technology and science …
Cost-sensitive learning for imbalanced medical data: a review
Abstract Integrating Machine Learning (ML) in medicine has unlocked many opportunities to
harness complex medical data, enhancing patient outcomes and advancing the field …
harness complex medical data, enhancing patient outcomes and advancing the field …
Graph-based class-imbalance learning with label enhancement
Class imbalance is a common issue in the community of machine learning and data mining.
The class-imbalance distribution can make most classical classification algorithms neglect …
The class-imbalance distribution can make most classical classification algorithms neglect …
ProbSAP: A comprehensive and high-performance system for student academic performance prediction
The student academic performance prediction is becoming an indispensable service in the
computer supported intelligent education system. But conventional machine learning-based …
computer supported intelligent education system. But conventional machine learning-based …
An optimized ensemble framework for multi-label classification on long-tailed chest x-ray data
J Jeong, B Jeoun, Y Park… - Proceedings of the IEEE …, 2023 - openaccess.thecvf.com
Chest X-rays (CXR) are essential in the diagnosis of lung disease, but CXR image
classification is challenging because patients often have multiple diseases simultaneously …
classification is challenging because patients often have multiple diseases simultaneously …
Semi-supervised imbalanced multi-label classification with label propagation
Multi-label learning tasks usually encounter the problem of the class-imbalance, where
samples and their corresponding labels are non-uniformly distributed over multi-label data …
samples and their corresponding labels are non-uniformly distributed over multi-label data …