AbstractRecently data stream has been extensively explored due to its emergence in a great deal of applications such as sensor networks, web click streams and network flows. One of the most important challenges in data streams is concept change where data underlying distributions change from time to time. A vast majority of researches in the context of data stream mining are devoted to labeled data, whereas, in real word human practice label of data are rarely available to the learning algorithms. Moreover, most of the methods that detect changes in unlabeled data stream merely deal with numerical data sets, and also, they are facing considerable difficulty when dimension of data tends to increase. In this paper, we present a Precise Statis...
In many cases, databases are in constant evolution, new data is arriving continuously. Data streams ...
Usually concept drift occurs in many applications of machine learning. Detecting a concept drift is ...
Detecting changes in data streams is a core objective in their analysis and has applications in, say...
AbstractRecently data stream has been extensively explored due to its emergence in a great deal of a...
A martingale framework for concept change detection based on testing data exchangeability was recent...
Abstract. In applications such as fraud and intrusion detection, it is of great interest to measure ...
In this research we present a novel approach to the concept change detection problem. Change detecti...
Concept drift detection, the identfication of changes in data distributions in streams,\ud is critic...
This research addresses two key issues in high speed data stream mining that are related to each oth...
© 2016 IEEE. An important problem that remains in online data mining systems is how to accurately an...
In the recent years, data streams have been in the gravity of focus of quite a lot number of researc...
Data stream mining deals with processing large amounts of data in nonstationary environments, where ...
The martingale framework for detecting changes in data stream, currently only applicable to labeled ...
The detection of concept drift allows to point out when a data stream changes its behavior over time...
Recently, several approaches have been proposed to deal with the increasingly challenging task of mi...
In many cases, databases are in constant evolution, new data is arriving continuously. Data streams ...
Usually concept drift occurs in many applications of machine learning. Detecting a concept drift is ...
Detecting changes in data streams is a core objective in their analysis and has applications in, say...
AbstractRecently data stream has been extensively explored due to its emergence in a great deal of a...
A martingale framework for concept change detection based on testing data exchangeability was recent...
Abstract. In applications such as fraud and intrusion detection, it is of great interest to measure ...
In this research we present a novel approach to the concept change detection problem. Change detecti...
Concept drift detection, the identfication of changes in data distributions in streams,\ud is critic...
This research addresses two key issues in high speed data stream mining that are related to each oth...
© 2016 IEEE. An important problem that remains in online data mining systems is how to accurately an...
In the recent years, data streams have been in the gravity of focus of quite a lot number of researc...
Data stream mining deals with processing large amounts of data in nonstationary environments, where ...
The martingale framework for detecting changes in data stream, currently only applicable to labeled ...
The detection of concept drift allows to point out when a data stream changes its behavior over time...
Recently, several approaches have been proposed to deal with the increasingly challenging task of mi...
In many cases, databases are in constant evolution, new data is arriving continuously. Data streams ...
Usually concept drift occurs in many applications of machine learning. Detecting a concept drift is ...
Detecting changes in data streams is a core objective in their analysis and has applications in, say...