This paper proposes a boosting-like method to train a classifier ensemble from data streams. It naturally adapts to concept drift and allows to quantify the drift in terms of its base learners. The algorithm is empirically shown to outperform learning algorithms that ignore concept drift. It performs no worse than advanced adaptive time window and example selection strategies that store all the data and are thus not suited for mining massive streams
It is challenging to use traditional data mining techniques to deal with real-time data stream class...
Modern analytical systems must process streaming data and correctly respond to data distribution cha...
© 2018, the Authors. The concept drift problem is a pervasive phenomenon in real-world data stream a...
Abstract. This paper proposes a boosting-like method to train a classifier ensemble from data stream...
Nowadays, many sources generate unbounded data streams at high incoming rates. It is impossible to s...
Abstract—Learning in nonstationary environments, also known as learning concept drift, is concerned ...
The treatment of large data streams in the presence of concept drifts is one of the main challenges ...
The performance of the machine learning model always decreases with the occurrence of concept drift ...
AbstractConcept drift represents that the underlying data generating distribution changes over time ...
AbstractThe problem addressed in this paper concerns mining data streams with concept drift. The goa...
Beyond applying machine learning predictive models to static tasks, a significant corpus of research...
Advanced analysis of data streams is quickly becoming a key area of data mining research as the numb...
For most real-world data streams, the concept about which data is obtained may shift from time to ti...
Data stream classification task needs to address challenges of enormous volume, continuous rapid flo...
Abstract: Concept drifting stream data mining have recently garnered a great deal of attention for M...
It is challenging to use traditional data mining techniques to deal with real-time data stream class...
Modern analytical systems must process streaming data and correctly respond to data distribution cha...
© 2018, the Authors. The concept drift problem is a pervasive phenomenon in real-world data stream a...
Abstract. This paper proposes a boosting-like method to train a classifier ensemble from data stream...
Nowadays, many sources generate unbounded data streams at high incoming rates. It is impossible to s...
Abstract—Learning in nonstationary environments, also known as learning concept drift, is concerned ...
The treatment of large data streams in the presence of concept drifts is one of the main challenges ...
The performance of the machine learning model always decreases with the occurrence of concept drift ...
AbstractConcept drift represents that the underlying data generating distribution changes over time ...
AbstractThe problem addressed in this paper concerns mining data streams with concept drift. The goa...
Beyond applying machine learning predictive models to static tasks, a significant corpus of research...
Advanced analysis of data streams is quickly becoming a key area of data mining research as the numb...
For most real-world data streams, the concept about which data is obtained may shift from time to ti...
Data stream classification task needs to address challenges of enormous volume, continuous rapid flo...
Abstract: Concept drifting stream data mining have recently garnered a great deal of attention for M...
It is challenging to use traditional data mining techniques to deal with real-time data stream class...
Modern analytical systems must process streaming data and correctly respond to data distribution cha...
© 2018, the Authors. The concept drift problem is a pervasive phenomenon in real-world data stream a...