Title :
Data Stream Clustering With Affinity Propagation
Author :
Xiangliang Zhang ; Furtlehner, Cyril ; Germain-Renaud, Cecile ; Sebag, Michele
Author_Institution :
King Abdullah Univ. of Sci. & Technol., Thuwal, Saudi Arabia
Abstract :
Data stream clustering provides insights into the underlying patterns of data flows. This paper focuses on selecting the best representatives from clusters of streaming data. There are two main challenges: how to cluster with the best representatives and how to handle the evolving patterns that are important characteristics of streaming data with dynamic distributions. We employ the Affinity Propagation (AP) algorithm presented in 2007 by Frey and Dueck for the first challenge, as it offers good guarantees of clustering optimality for selecting exemplars. The second challenging problem is solved by change detection. The presented StrAP algorithm combines AP with a statistical change point detection test; the clustering model is rebuilt whenever the test detects a change in the underlying data distribution. Besides the validation on two benchmark data sets, the presented algorithm is validated on a real-world application, monitoring the data flow of jobs submitted to the EGEE grid.
Keywords :
data flow analysis; fault tolerant computing; pattern clustering; EGEE grid; StrAP algorithm; affinity propagation algorithm; clustering model; clustering optimality; data distribution; data flows; data stream clustering; dynamic distributions; statistical change point detection test; streaming data; Change detection algorithms; Clustering algorithms; Computational modeling; Data models; Monitoring; Optimization; Reservoirs; Affinity Propagation; Data Stream Clustering; Streaming data clustering; affinity propagation; autonomic computing; grid monitoring;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2013.146