IJSRD - International Journal for Scientific Research and Development is a leading Online Open-Access peer reviewed journal. We publish original and high quality papers and high indexing and promotion of your published papers. Submit your Research Paper Online @ijsrd.com | IMPACT FACTOR: 4.396 (SJIF) | IC Value: 66.68 | ✉ Info@ijsrd.com | ✆ 08866191212/22
Showing posts with label Engineering Journal. Show all posts
Showing posts with label Engineering Journal. Show all posts
Wednesday, February 6, 2019
Saturday, January 5, 2019
Friday, December 14, 2018
IJSRD - December 2018 | Vol 6 Issue 10 Submit Paper
IJSRD - INTERNATIONAL JOURNAL FOR SCIENTIFIC RESEARCH AND DEVELOPMENT
CALL FOR PAPER | SUBMIT PAPER | VOL. 6 – ISSUE 10 DEC. 2018
INTERNATIONAL ONLINE OPEN-ACCESS PEER REVIEWED JOURNAL
INDIAN LEADING ONLINE JOURNAL FOR ENGINEERING
IF : 4.396 | I.C.VALUE : 66.68
Tuesday, November 20, 2018
IJSRD | High Speed Clustering Scheme for High Dimensional Data Streams
Research Aera & Helpful Artile for : Computer Science & Information Technology
Author(s): Sudeesh S, M. Suresh
Institute: SELVAM COLLEGE OF TECHNOLOGY
Keywords: Clustering, Data Stream, High Dimensionality
Abstract:
This paper presents a novel high-speed clustering scheme for high dimensional data streams. Data stream clustering has gained importance in different applications, for example, in network monitoring, intrusion detection, and real-time sensing are few of those. High dimensional stream data is inherently more complex when used for clustering because the evolving nature of the stream data and high dimensionality make it non-trivial. In order to tackle this problem, projected subspace within the high dimensions and limited window sized data per unit of time are used for clustering purpose. We propose a High Speed and Dimensions data stream clustering scheme (HSDStream) which employs exponential moving averages to reduce the size of the memory and speed up the processing of projected subspace data stream. The proposed algorithm has been tested against HDD Stream for cluster purity, memory usage, and the cluster sensitivity. Experimental results have been obtained for corrected KDD intrusion detection dataset. These results show that HSDStream outperforms the HDDStream in performance metrics, especially the memory usage and the processing speed.
Paper ID: IJSRDV5I10658
Published in IJSRD Volume : 5, Issue : 1, April 2017
Download Article
For More Helpful Article or Information please visit:IJSRD - International Journal for Scientific Research & Development
Subscribe to:
Posts (Atom)