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International Journal of Advanced Research in Computer and Communication Engineering A monthly Peer-reviewed & Refereed journal
ISSN Online 2278-1021ISSN Print 2319-5940Since 2012
IJARCCE adheres to the suggestive parameters outlined by the University Grants Commission (UGC) for peer-reviewed journals, upholding high standards of research quality, ethical publishing, and academic excellence.
← Back to VOLUME 5, ISSUE 4, APRIL 2016

A Graph Data Summarization and Data Visualization Technique

Stibu Stephen, Dr. R. Manicka Chezian

DOI: 10.17148/IJARCCE.2016.5472

Abstract: A data Analysis and visualization technique poses challenges too many areas of the data mining research. There are several visualization techniques and tools have been proposed for almost all domains. But there is a necessity to summarize and visualize a large citation network data according to the user customization. While performing the visualization, influence data should be identified using the summarization technique. The summarization and visualization of graph structured data is a tedious part in research. The existing state of the art influence maximization algorithms can detect the most influential node in a citation network for all structured data, except graph structured data. Clustering techniques are widely used to fold large graph structured data in existing graphs summarization methods. In this paper, first formally define the problem of data summarization and visualization process with three segments, which are effective summarization, localized summarization and handling high, influenced rich information in citation networks. In general, research filed contains lots of interrelated datas, which has multi associations among the data. To handle the above Graph data visualization and summarization problem, here propose a new prototype named as (GSV) Graph Summarization and GSV algorithm for large scale citation networks. Finally present a theoretical analysis on GSV, which is equivalent to the existing kernel k mean clustering algorithm.



Keywords: Data summarization, visual data mining, Graph mining, GSV.

How to Cite:

[1] Stibu Stephen, Dr. R. Manicka Chezian, “A Graph Data Summarization and Data Visualization Technique,” International Journal of Advanced Research in Computer and Communication Engineering (IJARCCE), DOI: 10.17148/IJARCCE.2016.5472