Comprehensive review on twin support vector machines
Twin support vector machine (TWSVM) and twin support vector regression (TSVR) are newly
emerging efficient machine learning techniques which offer promising solutions for …
emerging efficient machine learning techniques which offer promising solutions for …
Leaf disease detection using machine learning and deep learning: Review and challenges
Identification of leaf disorder plays an important role in the economic prosperity of any
country. Many parts of a plant can be infected by a virus, fungal, bacteria, and other …
country. Many parts of a plant can be infected by a virus, fungal, bacteria, and other …
An overview on twin support vector regression
H Huang, X Wei, Y Zhou - Neurocomputing, 2022 - Elsevier
Twin support vector regression (TSVR) is a useful extension of traditional support vector
regression (SVR). As a new regression model, the basic idea of TSVR is generating a pair of …
regression (SVR). As a new regression model, the basic idea of TSVR is generating a pair of …
Least squares structural twin bounded support vector machine on class scatter
Several projects and application development teams are spending their precious time and
energy in the field of classification and regression. So, the main target of the proposed …
energy in the field of classification and regression. So, the main target of the proposed …
Robust regression under the general framework of bounded loss functions
Conventional regression methods often fail when encountering noise. The application of a
bounded loss function is an effective means to enhance regressor robustness. However …
bounded loss function is an effective means to enhance regressor robustness. However …
Affinity based fuzzy kernel ridge regression classifier for binary class imbalance learning
BB Hazarika, D Gupta - Engineering Applications of Artificial Intelligence, 2023 - Elsevier
The class imbalance learning (CIL) problem indicates when one class have very low
proportions of samples (minority class) compared to the other class (majority class). Even …
proportions of samples (minority class) compared to the other class (majority class). Even …
Bipolar fuzzy based least squares twin bounded support vector machine
Data classification is a key domain of research in real-world applications. One of the big
challenges of real-world data classification is to tackle the presence of noise and outliers. In …
challenges of real-world data classification is to tackle the presence of noise and outliers. In …
An intuitionistic fuzzy random vector functional link classifier
Random vector functional link (RVFL) is a widely used powerful model for solving real-life
problems in classification and regression. However, the RVFL is not able to reduce the …
problems in classification and regression. However, the RVFL is not able to reduce the …
[HTML][HTML] Research on health state estimation methods of lithium-ion battery for small sample data
Y Wang, D Meng, Y Wang, R Li, Y Zhou - Energy Reports, 2022 - Elsevier
Abstract The SOH (State of Health) of lithium-ion batteries is an important feature that
characterizes the reliable operation of energy storage systems. In this study, according to the …
characterizes the reliable operation of energy storage systems. In this study, according to the …
Robust twin support vector regression with smooth truncated H ε loss function
T Shi, S Chen - Neural Processing Letters, 2023 - Springer
Twin support vector regression (TSVR) is an important algorithm to handle regression
problems developed on the basis of support vector regression (SVR). However, TSVR …
problems developed on the basis of support vector regression (SVR). However, TSVR …