Parallel computing plays a crucial role in processing large-scale graph data. Complex network analysis is an exciting area of research for many applications in different scientific domains e.g., sociology, biology, online media, recommendation systems and many more. Graph mining is an area of interest with diverse problems from different domains of our daily life. Due to the advancement of data and computing technologies, graph data is growing at an enormous rate, for example, the number of links in social networks is growing every millisecond. Machine/Deep learning plays a significant role for technological accomplishments to work with big data in modern era. We work on a well-known graph problem, community detection (CD). We design parall...
Graphs naturally represent information in a wide range of disciplines, from social science to biolog...
Graph Convolutional Networks (GCNs) are extensively utilized for deep learning on graphs. The large ...
Implementing machine learning algorithms for large data, such as the Web graph and social networks, ...
Parallel computing plays a crucial role in processing large-scale graph data. Complex network analys...
Community detection (or clustering) in large-scale graph is an important problem in graph mining. Co...
Abstract. Tackling the current volume of graph-structured data requires parallel tools. We extend ou...
Abstract—The amount of graph-structured data has recently experienced an enormous growth in many app...
Abstract. Tackling the current volume of graph-structured data re-quires parallel tools. We extend o...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Abstract—The volume of existing graph-structured data requires improved parallel tools and algorithm...
Complex networks analysis is a very popular topic in computer science. Unfortunately this networks, ...
Accelerating sequential algorithms in order to achieve high performance is often a nontrivial task. ...
Implementing machine learning algorithms for large data, such as the Web graph and social networks, ...
Research areas: Graph mining algorithmsLarge graphs with billions of nodes and edges are increasingl...
Graphs naturally represent information in a wide range of disciplines, from social science to biolog...
Graph Convolutional Networks (GCNs) are extensively utilized for deep learning on graphs. The large ...
Implementing machine learning algorithms for large data, such as the Web graph and social networks, ...
Parallel computing plays a crucial role in processing large-scale graph data. Complex network analys...
Community detection (or clustering) in large-scale graph is an important problem in graph mining. Co...
Abstract. Tackling the current volume of graph-structured data requires parallel tools. We extend ou...
Abstract—The amount of graph-structured data has recently experienced an enormous growth in many app...
Abstract. Tackling the current volume of graph-structured data re-quires parallel tools. We extend o...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Abstract—The volume of existing graph-structured data requires improved parallel tools and algorithm...
Complex networks analysis is a very popular topic in computer science. Unfortunately this networks, ...
Accelerating sequential algorithms in order to achieve high performance is often a nontrivial task. ...
Implementing machine learning algorithms for large data, such as the Web graph and social networks, ...
Research areas: Graph mining algorithmsLarge graphs with billions of nodes and edges are increasingl...
Graphs naturally represent information in a wide range of disciplines, from social science to biolog...
Graph Convolutional Networks (GCNs) are extensively utilized for deep learning on graphs. The large ...
Implementing machine learning algorithms for large data, such as the Web graph and social networks, ...