Large graph networks frequently appear in the latest applications. Their graph structures are very large, and the interaction among the vertices makes it difficult to split the structures into separate multiple structures, thus increasing the difficulty of frequent subgraph mining. The process of calculating subgraph isomorphism often requires many calculations. Reducing the unessential structure of the graph is an effective method to improve the efficiency. Therefore, we propose a large graph sampling algorithm (RASI) based on random areas selection sampling and incorporate graph induction techniques to reduce the structure of the original graph. In addition, we find that constraining the weight of the number of vertices in the entire grap...
Distributed System, plays a vital role in Frequent Subgraph Mining (FSM) to extract frequent subgrap...
Mining labeled subgraph is a popular research task in data mining because of its potential applicati...
Data mining is a popular research area that has been studied by many researchers and focuses on find...
In many recent applications, a graph is used to simulate many complex systems, such as social networ...
Large graphs are often used to simulate and model complex systems in variousresearch and application...
AbstractFrequent subgraph mining (FSM) is defined as finding all the subgraphs in a given graph that...
While data mining in chemoinformatics studied graph data with dozens of nodes, systems biology and t...
Graph data has been so prevalent that efficiently obtaining useful information from them is highly d...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
While data mining in chemoinformatics studied graph data with dozens of nodes, systems biology and t...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
With the increasing prevalence of data that model relationships between various entities, the use of...
Distributed System, plays a vital role in Frequent Subgraph Mining (FSM) to extract frequent subgrap...
Mining labeled subgraph is a popular research task in data mining because of its potential applicati...
Data mining is a popular research area that has been studied by many researchers and focuses on find...
In many recent applications, a graph is used to simulate many complex systems, such as social networ...
Large graphs are often used to simulate and model complex systems in variousresearch and application...
AbstractFrequent subgraph mining (FSM) is defined as finding all the subgraphs in a given graph that...
While data mining in chemoinformatics studied graph data with dozens of nodes, systems biology and t...
Graph data has been so prevalent that efficiently obtaining useful information from them is highly d...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
While data mining in chemoinformatics studied graph data with dozens of nodes, systems biology and t...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
With the increasing prevalence of data that model relationships between various entities, the use of...
Distributed System, plays a vital role in Frequent Subgraph Mining (FSM) to extract frequent subgrap...
Mining labeled subgraph is a popular research task in data mining because of its potential applicati...
Data mining is a popular research area that has been studied by many researchers and focuses on find...