The analysis of large graphs offers new insights into social and other networks, and thus is of increasing interest to marketeers, sociologists, mathematicians and computer scientists. However, the extremely large size of most graphs of interest renders them difficult to analyze because of at least four challenges: lack of memory, restricted access to the full graph, prohibitive computational cost and real-time changes in the graph. This dissertation presents graph sampling as a powerful and attractive approach to meet the above challenges, whereby properties of the full graph are estimated based on an examination of only a small portion of the graph. In this dissertation, we focus on two graph sampling strategies: edge-based sampling and t...
Nowadays, Online Social Networks (OSNs) have become dra-matically popular and the study of social gr...
Large graph networks frequently appear in the latest applications. Their graph structures are very l...
Visual analysis is one of the most effective methods of analyzing large complex networks, and divers...
Sampling is a standard approach in big-graph analytics; the goal is to efficiently estimate the grap...
Given a huge real graph, how can we derive a representative sample? There are many known algorithms ...
Many technological, socio-economic, environmental, biomedical phenomena exhibit an underlying graph ...
Large-scale graph analysis and visualization is becoming a more challenging task, due to the increas...
Exploring statistics of locally connected subgraph patterns (also known as network motifs) has helpe...
Network analysis and graph mining play a prominent role in providing insights and studying phenomena...
Nowadays, Online Social Networks (OSNs) have become dramatically popular and the study of social gra...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Nowadays, Online Social Networks (OSNs) have become dra-matically popular and the study of social gr...
Large graph networks frequently appear in the latest applications. Their graph structures are very l...
Visual analysis is one of the most effective methods of analyzing large complex networks, and divers...
Sampling is a standard approach in big-graph analytics; the goal is to efficiently estimate the grap...
Given a huge real graph, how can we derive a representative sample? There are many known algorithms ...
Many technological, socio-economic, environmental, biomedical phenomena exhibit an underlying graph ...
Large-scale graph analysis and visualization is becoming a more challenging task, due to the increas...
Exploring statistics of locally connected subgraph patterns (also known as network motifs) has helpe...
Network analysis and graph mining play a prominent role in providing insights and studying phenomena...
Nowadays, Online Social Networks (OSNs) have become dramatically popular and the study of social gra...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Massive graphs are becoming increasingly common in a variety of domains such as social networks and ...
Nowadays, Online Social Networks (OSNs) have become dra-matically popular and the study of social gr...
Large graph networks frequently appear in the latest applications. Their graph structures are very l...
Visual analysis is one of the most effective methods of analyzing large complex networks, and divers...