Data streams have become ubiquitous in recent years and are handled on a variety of platforms, ranging from dedicated high-end servers to battery-powered mobile sensors. Data stream processing is therefore required to work under virtually any dynamic resource constraints. Few approaches exist for stream mining algorithms that are capable to adapt to given constraints, and none of them reflects from the resource adaptation to the resulting output quality. In this paper, we propose a general model to achieve resource and quality awareness for stream mining algorithms in dynamic setups. The general applicability is granted by classifying influencing parameters and quality measures as components of a multiobjective optimization problem. By the ...
AbstractData-driven, adaptive computations are key to enabling the deployment of accurate and effici...
The recent advances in hardware and software have enabled the capture of different measurements of d...
Mining data streams is an emerging area of research given the potentially large number of business a...
Due to the inherent characteristics of data streams, appropriate mining techniques heavily rely on w...
Scalable stream processing systems have to continuously manage changing resources efficiently, which...
Abstract Mining data streams is a field of increase interest due to the importance of its applicatio...
We consider the problem of resource allocation in mining multiple data streams. Due to the large vol...
Networks of classifiers can offer improved accuracy and scalability over single classifiers by utili...
Traditional data mining techniques expect all data to be managed within some form of persistent data...
In this demo, we show that intelligent load shedding is essential in achieving optimum results in mi...
Two critical challenges typically associated with mining data streams are concept drift and data con...
this paper, we address the challenges to mine data streams as well as discuss some limitations of cu...
Mining data streams has recently become an important and challenging task for a wide range of applic...
Mining data streams has raised a number of research challenges for the data mining community. These ...
Mining data streams has raised a number of research challenges for the data mining community. These ...
AbstractData-driven, adaptive computations are key to enabling the deployment of accurate and effici...
The recent advances in hardware and software have enabled the capture of different measurements of d...
Mining data streams is an emerging area of research given the potentially large number of business a...
Due to the inherent characteristics of data streams, appropriate mining techniques heavily rely on w...
Scalable stream processing systems have to continuously manage changing resources efficiently, which...
Abstract Mining data streams is a field of increase interest due to the importance of its applicatio...
We consider the problem of resource allocation in mining multiple data streams. Due to the large vol...
Networks of classifiers can offer improved accuracy and scalability over single classifiers by utili...
Traditional data mining techniques expect all data to be managed within some form of persistent data...
In this demo, we show that intelligent load shedding is essential in achieving optimum results in mi...
Two critical challenges typically associated with mining data streams are concept drift and data con...
this paper, we address the challenges to mine data streams as well as discuss some limitations of cu...
Mining data streams has recently become an important and challenging task for a wide range of applic...
Mining data streams has raised a number of research challenges for the data mining community. These ...
Mining data streams has raised a number of research challenges for the data mining community. These ...
AbstractData-driven, adaptive computations are key to enabling the deployment of accurate and effici...
The recent advances in hardware and software have enabled the capture of different measurements of d...
Mining data streams is an emerging area of research given the potentially large number of business a...