We present a framework for active learning on evolving data streams, as an extension to the MOA system. In learning to classify streaming data, obtaining the true labels may require major effort and may incur excessive cost. Active learning focuses on learning an accurate model with as few labels as possible. Streaming data poses additional challenges for active learning, since the data distribution may change over time (concept drift) and classifiers need to adapt. Conventional active learning strategies concentrate on querying the most uncertain instances, which are typically concentrated around the decision boundary. If changes do not occur close to the boundary, they will be missed and classifiers will fail to adapt. We propose a softwa...
A hands-on approach to tasks and techniques in data stream mining and real-time analytics, with exam...
Distribution drift is an important issue for practical applications of machine learning (ML). In par...
There is an emerging need for predictive models to be trained on-the-fly, since in numerous machine ...
AbstractObjects being recognized may arrive continuously to a classifier in the form of data stream,...
The classification of data streams is an interesting but also a challenging problem. A data stream m...
Data streams classification is an important problem however, poses many challenges. Since the length...
The classification of data streams is an interesting but also a challenging problem. A data stream m...
In learning to classify data streams, it is impractical and expensive to label all of the instances....
Nowadays, every device connected to the Internet generates an ever-growing (formally, unbounded) str...
With the exponential growth of data amount and sources, access to large collections of data has beco...
In this paper, we propose a new research problem on active learning from data streams, where data vo...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
In real-world applications, the process generating the data might suffer from nonstationary effects ...
Active learning (AL) is a promising way to efficiently build up training sets with minimal supervisi...
Online active learning is a paradigm in machine learning that aims to select the most informative da...
A hands-on approach to tasks and techniques in data stream mining and real-time analytics, with exam...
Distribution drift is an important issue for practical applications of machine learning (ML). In par...
There is an emerging need for predictive models to be trained on-the-fly, since in numerous machine ...
AbstractObjects being recognized may arrive continuously to a classifier in the form of data stream,...
The classification of data streams is an interesting but also a challenging problem. A data stream m...
Data streams classification is an important problem however, poses many challenges. Since the length...
The classification of data streams is an interesting but also a challenging problem. A data stream m...
In learning to classify data streams, it is impractical and expensive to label all of the instances....
Nowadays, every device connected to the Internet generates an ever-growing (formally, unbounded) str...
With the exponential growth of data amount and sources, access to large collections of data has beco...
In this paper, we propose a new research problem on active learning from data streams, where data vo...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
In real-world applications, the process generating the data might suffer from nonstationary effects ...
Active learning (AL) is a promising way to efficiently build up training sets with minimal supervisi...
Online active learning is a paradigm in machine learning that aims to select the most informative da...
A hands-on approach to tasks and techniques in data stream mining and real-time analytics, with exam...
Distribution drift is an important issue for practical applications of machine learning (ML). In par...
There is an emerging need for predictive models to be trained on-the-fly, since in numerous machine ...