Performance test case generation for microprocessors
Pradip Bose
VTS 1998
Data stream mining has attracted considerable attention over the past few years owing to the significance of its applications. Streaming data is often evolving ewer time. Capturing changes could be used for detecting an event or a phenomenon in various applications. Weather conditions, economical changes, astronomical, and scientific phenomena are among a wide range of applications. Because of the high volume and speed of data streams, it is computationally hard to capture these changes from raw data in real-time. In this paper, we propose a novel algorithm that we term as STREAM-DETECT to capture these changes in data stream distribution and/or domain using clustering result deviation. STREAM-DETECT is followed by a process of offline classification CHANGE-CLASS. This classification is concerned with the association of the history of change characteristics with the observed event or phenomenon. Experimental results show the efficiency of the proposed framework in both detecting the changes and classification accuracy. © World Scientific Publishing Company.
Pradip Bose
VTS 1998
Xinyi Su, Guangyu He, et al.
Dianli Xitong Zidonghua/Automation of Electric Power Systems
Sonia Cafieri, Jon Lee, et al.
Journal of Global Optimization
Apostol Natsev, Alexander Haubold, et al.
MMSP 2007