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Farrag, Mohamed H.
- A Proposed Algorithm to Detect the Largest Community Based On Depth Level (LC-BDL)
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Authors
Affiliations
1 Canadian International College, Cairo, EG
2 Helwan University, Cairo, EG
1 Canadian International College, Cairo, EG
2 Helwan University, Cairo, EG
Source
International Journal of Advanced Networking and Applications, Vol 9, No 2 (2017), Pagination: 3362-3375Abstract
The incredible rising of online networks show that these networks are complex and involving massive data.Giving a very strong interest to set of techniques developed for mining these networks. The clique problem is a well known NP-Hard problem in graph mining. One of the fundamental applications for it is the community detection. It helps to understand and model the network structure which has been a fundamental problem in several fields. In literature, the exponentially increasing computation time of this problem make the quality of these solutions is limited and infeasible for massive graphs. Furthermore, most of the proposed approaches are able to detect only disjoint communities. In this paper, we present a new clique based approach for fast and efficient overlapping community detection. The work overcomes the shortfalls of clique percolation method (CPM), one of most popular and commonly used methods in this area. The shortfalls occur due to brute force algorithm for enumerating maximal cliques and also the missing out many vertices thatleads to poor node coverage. The proposed work overcome these shortfalls producing NMC method for enumerating maximal cliques then detects overlapping communities using three different community scales based on three different depth levels to assure high nodes coverage and detects the largest communities. The clustering coefficient and cluster density are used to measure the quality. The work also provide experimental results on benchmark real-world network to demonstrate the efficiency and compare the new proposed algorithm with CPM method, The proposed algorithm is able to quickly discover the maximal cliques and detects overlapping community with interesting remarks and findings.Keywords
Graph Mining, Maximal Clique Problem, Overlapping Community Detection, Social Network Analysis.References
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- A Survey of Cloud Computing Approaches, Business Opportunities, Risk Analysis and Solving Approaches
Abstract Views :154 |
PDF Views:0
Authors
Affiliations
1 Canadian International College, Cairo, EG
2 Helwan University, Cairo, EG
1 Canadian International College, Cairo, EG
2 Helwan University, Cairo, EG
Source
International Journal of Advanced Networking and Applications, Vol 9, No 2 (2017), Pagination: 3382-3386Abstract
In recent years, cloud computing become mainstream technology in IT industry offering new trends to software, platform and infrastructure as a service over internet on a global scale by centralizing storage, memory and bandwidth. This new technology raises some new opportunities in producing different business operations which influence some new business benefits also some different risks issues are involved using cloud computing. This paper attempts to identify cloud computing approaches, highlights its business opportunities and help cloud computing user to analysis the cloud computing risks and to produce different solving approaches. This paper is targeted towards business and IT leaders considering a move to the cloud for some or all of their business applications.Keywords
Cloud Computing, Cloud Services, Data Security, Deployment Model, Risk Analysis.References
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