Graph analysis can be used to study streaming data from a variety of sources, such as social networks, financial transactions, and online communication. The analysis of streaming data poses many challenges, including dealing with the high volume of data and the speed with which it is generated. This dissertation addresses challenges that occur throughout the graph analysis process. Because many datasets are large and growing, it may be infeasible to collect and build a graph from all the data that has been generated. This work addresses the challenges created by large volumes of streaming data through new sampling techniques. The algorithms presented can sample a subgraph in a single pass over an edge stream and are therefore appropriate fo...
My thesis would focus on analyzing the estimation of node similarity in streaming bipartite graph. A...
Streaming is an important paradigm for handling high-speed data sets that are too large to fit in ma...
Statistical relational learning techniques have been successfully applied in a wide range of relatio...
Graph analysis uses graph data collected on a physical, biological, or social phenomena to shed ligh...
It is natural to model and represent interaction data as graphs in a broad range of domains such as ...
Graph processing has become an important part of various areas of computing, including machine learn...
The widespread usage of the Web and later of the Web 2.0 for social interactions has stimulated scho...
Graph data represent information about entities (vertices) and the relationships or connections betw...
Networks have created many new and exciting areas of scientific inquiry, particularly in the field o...
Streaming data is becoming more prevalent in our society every day. With the increasing use of techn...
Network analysis and graph mining play a prominent role in providing insights and studying phenomena...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
Data analytics is to analyze raw data and mine insights, trends, and patterns from them. Due to the ...
The roots of graph theory lead back to the puzzle of Königsberg's bridges. In 1736 Leonhardt Euler p...
Graphs are commonly used for representing relations between entities and handling data processing in...
My thesis would focus on analyzing the estimation of node similarity in streaming bipartite graph. A...
Streaming is an important paradigm for handling high-speed data sets that are too large to fit in ma...
Statistical relational learning techniques have been successfully applied in a wide range of relatio...
Graph analysis uses graph data collected on a physical, biological, or social phenomena to shed ligh...
It is natural to model and represent interaction data as graphs in a broad range of domains such as ...
Graph processing has become an important part of various areas of computing, including machine learn...
The widespread usage of the Web and later of the Web 2.0 for social interactions has stimulated scho...
Graph data represent information about entities (vertices) and the relationships or connections betw...
Networks have created many new and exciting areas of scientific inquiry, particularly in the field o...
Streaming data is becoming more prevalent in our society every day. With the increasing use of techn...
Network analysis and graph mining play a prominent role in providing insights and studying phenomena...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
Data analytics is to analyze raw data and mine insights, trends, and patterns from them. Due to the ...
The roots of graph theory lead back to the puzzle of Königsberg's bridges. In 1736 Leonhardt Euler p...
Graphs are commonly used for representing relations between entities and handling data processing in...
My thesis would focus on analyzing the estimation of node similarity in streaming bipartite graph. A...
Streaming is an important paradigm for handling high-speed data sets that are too large to fit in ma...
Statistical relational learning techniques have been successfully applied in a wide range of relatio...