In many applications, e.g. urban traffic monitoring, stock trading, and industrial sensor data monitoring, clustering algorithms are applied on data streams in real-time to find current patterns. Here, sliding windows are commonly used as they capture concept drift. Real-time clustering over sliding windows is early detection of continuously evolving clusters as soon as they occur in the stream, which requires efficient maintenance of cluster memberships that change as windows slide. Data stream management systems (DSMSs) provide high-level query languages for searching and analyzing streaming data. In this thesis we extend a DSMS with a real-time data stream clustering framework called Generic 2-phase Continuous Summarization framework (G2...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
Traditional clustering algorithms merely considered static data. Today's various applications and re...
As applications generate massive amounts of data streams, the requirement for ways to analyze and cl...
In many applications, e.g. urban traffic monitoring, stock trading, and industrial sensor data monit...
Recent advances in data collecting devices and data storage systems are continuously offering cheape...
With the development of computing systems in every sector of activity, more and more data is now ava...
Performing data mining tasks in streaming data is considered a challenging research direction, due t...
Data stream mining (DSM) deals with continuous online processing and evaluation of fast-accumulating...
International audienceMining data stream is a challenging research area in data mining, and concerns...
Recently a new class of data-intensive applications has become widely recognized: application in whi...
"In this paper, we introduce a new clustering strategy for temporally ordered. data streams, which i...
Abstract—In order to provide real-time early warning from the public sentiment information in social...
Data growth in today’s world is exponential, many applications generate huge amount of data st...
Existing data-stream clustering algorithms such as CluStream are based on k-means. These clustering ...
In data stream clustering, it is desirable to have algorithms that are able to detect clusters of ar...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
Traditional clustering algorithms merely considered static data. Today's various applications and re...
As applications generate massive amounts of data streams, the requirement for ways to analyze and cl...
In many applications, e.g. urban traffic monitoring, stock trading, and industrial sensor data monit...
Recent advances in data collecting devices and data storage systems are continuously offering cheape...
With the development of computing systems in every sector of activity, more and more data is now ava...
Performing data mining tasks in streaming data is considered a challenging research direction, due t...
Data stream mining (DSM) deals with continuous online processing and evaluation of fast-accumulating...
International audienceMining data stream is a challenging research area in data mining, and concerns...
Recently a new class of data-intensive applications has become widely recognized: application in whi...
"In this paper, we introduce a new clustering strategy for temporally ordered. data streams, which i...
Abstract—In order to provide real-time early warning from the public sentiment information in social...
Data growth in today’s world is exponential, many applications generate huge amount of data st...
Existing data-stream clustering algorithms such as CluStream are based on k-means. These clustering ...
In data stream clustering, it is desirable to have algorithms that are able to detect clusters of ar...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
Traditional clustering algorithms merely considered static data. Today's various applications and re...
As applications generate massive amounts of data streams, the requirement for ways to analyze and cl...