On supervised class-imbalanced learning: An updated perspective and some key challenges
S Das, SS Mullick, I Zelinka - IEEE Transactions on Artificial …, 2022 - ieeexplore.ieee.org
The problem of class imbalance has always been considered as a significant challenge to
traditional machine learning and the emerging deep learning research communities. A …
traditional machine learning and the emerging deep learning research communities. A …
Radial-based oversampling for noisy imbalanced data classification
Imbalanced data classification remains a focus of intense research, mostly due to the
prevalence of data imbalance in various real-life application domains. A disproportion …
prevalence of data imbalance in various real-life application domains. A disproportion …
A network-based positive and unlabeled learning approach for fake news detection
Fake news can rapidly spread through internet users and can deceive a large audience.
Due to those characteristics, they can have a direct impact on political and economic events …
Due to those characteristics, they can have a direct impact on political and economic events …
Smotefuna: Synthetic minority over-sampling technique based on furthest neighbour algorithm
Class imbalance occurs in classification problems in which the “normal” cases, or instances,
significantly outnumber the “abnormal” instances. Training a standard classifier on …
significantly outnumber the “abnormal” instances. Training a standard classifier on …
Dynamic ensemble selection for multi-class classification with one-class classifiers
In this paper we deal with the problem of addressing multi-class problems with
decomposition strategies. Based on the divide-and-conquer principle, a multi-class problem …
decomposition strategies. Based on the divide-and-conquer principle, a multi-class problem …
Towards a holistic view of bias in machine learning: Bridging algorithmic fairness and imbalanced learning
Abstract Machine learning (ML) is playing an increasingly important role in rendering
decisions that affect a broad range of groups in society. This posits the requirement of …
decisions that affect a broad range of groups in society. This posits the requirement of …
A statistical pattern based feature extraction method on system call traces for anomaly detection
Context In host-based anomaly detection, feature extraction on the system call traces is
important to build an effective anomaly detection model. Different kinds of feature extraction …
important to build an effective anomaly detection model. Different kinds of feature extraction …
[HTML][HTML] Fusing one-class and two-class classification–A case study on the detection of pepper fraud
M Alewijn, V Akridopoulou, T Venderink… - Food Control, 2023 - Elsevier
Black pepper is a commercially important commodity, which is susceptible for fraudulent
additions. Analytical tools are capable of detection of specific additions, but in most …
additions. Analytical tools are capable of detection of specific additions, but in most …
LOSS-GAT: Label propagation and one-class semi-supervised graph attention network for fake news detection
In the era of widespread social networks, the rapid dissemination of fake news has emerged
as a significant threat, inflicting detrimental consequences across various dimensions of …
as a significant threat, inflicting detrimental consequences across various dimensions of …
An interpretable measure of dataset complexity for imbalanced classification problems
The class imbalance problem is associated with harmful classification bias and presents
itself in a wide variety of important applications of supervised machine learning. Measures …
itself in a wide variety of important applications of supervised machine learning. Measures …