In this paper, we propose a weighted online sequential extreme learning machine with kernels (WOS-ELMK) for class imbalance learning (CIL). The existing online sequential extreme learning machine (OS-ELM) methods for CIL use random feature mapping. WOS-ELMK is the first OS-ELM method which uses kernel mapping for online class imbalance learning. The kernel mapping avoids the non-optimal hidden node problem associated with weighted OS-ELM (WOS-ELM) and other existing OS-ELM methods for CIL. WOS-ELMK tackles both the binary class and multiclass imbalance problems in one-by-one as well as chunk-by-chunk learning modes. For imbalanced big data streams, a fixed size window scheme is also implemented for WOS-ELMK. We empirically show that WOS-ELM...
In many practical engineering applications, data are usually collected in online pattern. However, i...
Previous class imbalance learning methods are mostly grounded on the assumption that all training da...
In imbalanced learning, most standard classification algorithms usually fail to properly represent d...
In this paper, we propose a weighted online sequential extreme learning machine with kernels (WOS-EL...
Most of the existing sequential learning methods for class imbalance learn data in chunks. In this p...
Recently, a kernel based online sequential extreme learning machine (OS-ELM) methods, OS-ELM with ke...
Extreme learning machine (ELM) is a competitive machine learning technique, which is simple in theor...
Class imbalance and concept drift are two problems commonly exist in sequential learning. A weighted...
Imbalanced learning, or learning from imbalanced data, is a challenging problem in both academy and ...
The extreme learning machine (ELM) was recently proposed as a unifying framework for different famil...
Class imbalance is a phenomenon of asymmetry that degrades the performance of traditional classifica...
The qualities of new data used in the sequential learning phase of the online sequential extreme lea...
To apply the single hidden-layer feedforward neural networks (SLFN) to identify time-varying system,...
A novel sequential learning algorihtm for training Single Hidden Layer Feedforward Neural Network (S...
Imbalanced classification is a challenging task in the fields of machine learning and data mining. C...
In many practical engineering applications, data are usually collected in online pattern. However, i...
Previous class imbalance learning methods are mostly grounded on the assumption that all training da...
In imbalanced learning, most standard classification algorithms usually fail to properly represent d...
In this paper, we propose a weighted online sequential extreme learning machine with kernels (WOS-EL...
Most of the existing sequential learning methods for class imbalance learn data in chunks. In this p...
Recently, a kernel based online sequential extreme learning machine (OS-ELM) methods, OS-ELM with ke...
Extreme learning machine (ELM) is a competitive machine learning technique, which is simple in theor...
Class imbalance and concept drift are two problems commonly exist in sequential learning. A weighted...
Imbalanced learning, or learning from imbalanced data, is a challenging problem in both academy and ...
The extreme learning machine (ELM) was recently proposed as a unifying framework for different famil...
Class imbalance is a phenomenon of asymmetry that degrades the performance of traditional classifica...
The qualities of new data used in the sequential learning phase of the online sequential extreme lea...
To apply the single hidden-layer feedforward neural networks (SLFN) to identify time-varying system,...
A novel sequential learning algorihtm for training Single Hidden Layer Feedforward Neural Network (S...
Imbalanced classification is a challenging task in the fields of machine learning and data mining. C...
In many practical engineering applications, data are usually collected in online pattern. However, i...
Previous class imbalance learning methods are mostly grounded on the assumption that all training da...
In imbalanced learning, most standard classification algorithms usually fail to properly represent d...