A common assumption in machine learning is that training data is complete, and the data distribution is fixed. However, in many practical applications, this assumption does not hold. Incremental learning was proposed to compensate for this problem. Common approaches include retraining models and incremental learning to compensate for the shortage of training data. Retraining models is time-consuming and computationally expensive, while incremental learning can save time and computational costs. However, the concept drift may affect the performance. Two crucial issues should be considered to address concept drift in incremental learning: gaining new knowledge without forgetting previously acquired knowledge and forgetting obsolete informatio...
Machine learning models nowadays play a crucial role for many applications in business and industry....
For current computational intelligence techniques, a major challenge is how to learn new concepts in...
For current computational intelligence techniques, a major challenge is how to learn new concepts in...
Support Vector Machines (SVMs) have become a popular tool for learning with large amounts of high di...
Data classification in streams where the underlying distribution changes over time is known to be di...
Data classification in streams where the underlying distribution changes over time is known to be di...
We study the problem of learning the data samples’ distribution as it changes in time. This change, ...
Support Vector Machines (SVMs) have become a popular tool for learning with large amounts of high ...
Abstract. Support Vector Machines (SVMs) have become a popular tool for learning with large amounts ...
Traditional machine learning methods, such as Support Vector Machines (SVMs), usually assume that tr...
Concept drift is an important feature of real-world data streams that can make usual machine learnin...
Whereas a large number of machine learning methods focus on offline learning over a single batch of ...
Whereas a large number of machine learning methods focus on offline learning over a single batch of ...
The performance of the machine learning model always decreases with the occurrence of concept drift ...
As real-world databases increase in size, there is a need to scale up inductive learning algorithms...
Machine learning models nowadays play a crucial role for many applications in business and industry....
For current computational intelligence techniques, a major challenge is how to learn new concepts in...
For current computational intelligence techniques, a major challenge is how to learn new concepts in...
Support Vector Machines (SVMs) have become a popular tool for learning with large amounts of high di...
Data classification in streams where the underlying distribution changes over time is known to be di...
Data classification in streams where the underlying distribution changes over time is known to be di...
We study the problem of learning the data samples’ distribution as it changes in time. This change, ...
Support Vector Machines (SVMs) have become a popular tool for learning with large amounts of high ...
Abstract. Support Vector Machines (SVMs) have become a popular tool for learning with large amounts ...
Traditional machine learning methods, such as Support Vector Machines (SVMs), usually assume that tr...
Concept drift is an important feature of real-world data streams that can make usual machine learnin...
Whereas a large number of machine learning methods focus on offline learning over a single batch of ...
Whereas a large number of machine learning methods focus on offline learning over a single batch of ...
The performance of the machine learning model always decreases with the occurrence of concept drift ...
As real-world databases increase in size, there is a need to scale up inductive learning algorithms...
Machine learning models nowadays play a crucial role for many applications in business and industry....
For current computational intelligence techniques, a major challenge is how to learn new concepts in...
For current computational intelligence techniques, a major challenge is how to learn new concepts in...