Streaming data incorporates dynamicity due to a nonstationary environment where data samples may endure class imbalance and change in data distribution over the period causing concept drifts. In real-life applications learning in dynamic data streams, is vitally important and challenging. A combined solution to adapt to class imbalance and concept drifts in dynamic data streams is rarely addressed by researchers. With this motivation, the current communication presents the online ensemble model smart pools of data with ensembles for class imbalance adaptive learning (SPECIAL) to learn in skewed and drifting data streams. It employs an ageing-based G-mean maximization strategy to adapt to dynamicity in data streams. It employs smart data-poo...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
International audienceEnsemble learning methods for evolving data streams are extremely powerful lea...
This paper presents a new ensemble method for learning from non-stationary data streams. In these si...
Numerous information system applications produce a huge amount of non-stationary streaming data that...
Machine learning in real-world scenarios is often challenged by concept drift and class imbalance. T...
In many applications of information systems learning algorithms have to act in dynamic environments ...
Class evolution, the phenomenon of class emergence and disappearance, is an important research topic...
Online class imbalance learning is a new learning problem that combines the challenges of both onlin...
Data stream classification is the process of learning supervised models from continuous labelled exa...
In the analysis more specifically in the classification of continuous data stream using machine lear...
In recent years, the prevalence of technological advances has led to an enormous and ever-increasing...
In many applications of information systems learning algorithms have to act in dynamic environments ...
Abstract—Learning in nonstationary environments, also known as learning concept drift, is concerned ...
Learning patterns from evolving data streams is challenging due to the characteristics of such strea...
In learning to classify data streams, it is impractical and expensive to label all of the instances....
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
International audienceEnsemble learning methods for evolving data streams are extremely powerful lea...
This paper presents a new ensemble method for learning from non-stationary data streams. In these si...
Numerous information system applications produce a huge amount of non-stationary streaming data that...
Machine learning in real-world scenarios is often challenged by concept drift and class imbalance. T...
In many applications of information systems learning algorithms have to act in dynamic environments ...
Class evolution, the phenomenon of class emergence and disappearance, is an important research topic...
Online class imbalance learning is a new learning problem that combines the challenges of both onlin...
Data stream classification is the process of learning supervised models from continuous labelled exa...
In the analysis more specifically in the classification of continuous data stream using machine lear...
In recent years, the prevalence of technological advances has led to an enormous and ever-increasing...
In many applications of information systems learning algorithms have to act in dynamic environments ...
Abstract—Learning in nonstationary environments, also known as learning concept drift, is concerned ...
Learning patterns from evolving data streams is challenging due to the characteristics of such strea...
In learning to classify data streams, it is impractical and expensive to label all of the instances....
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
International audienceEnsemble learning methods for evolving data streams are extremely powerful lea...
This paper presents a new ensemble method for learning from non-stationary data streams. In these si...