Current research on network analysis; such as community detection, pattern mining and many other graph mining application mostly focus on large social or biological networks. Such experiments may find interesting patterns that helps us to understand the unknown relationship within the network. Sometimes the size of the input networks are so big that it needs an efficient algorithm to overcome the time and space complexities. In this paper we modify an existing algorithm that finds the maximal patterns from a set of input networks. Maximal patterns are those patterns that are not part of any frequent patterns. We introduce a new relational attributes to our algorithm from the input networks, we call them the edge attributes. We have tested o...
Graph support measures are functions measuring how frequently a given subgraph pattern occurs in a g...
This thesis describes research work undertaken in the field of graph-based knowledge discovery (or g...
A lot of real world problems can be modeled as traversals on graph, and mining from such traversals ...
Data mining techniques have an important implication in social and biological network analysis, were...
Graph pattern mining aims at identifying structures that appear frequently in large graphs, under th...
Due to the availability of rich network data, graph mining techniques have been improved to handle t...
Frequent graph mining is one of famous data mining fields that receive the most attention, and its i...
In recent years, the popularity of graph databases has grown rapidly. This paper focuses on single-g...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
Networks have created many new and exciting areas of scientific inquiry, particularly in the field o...
A lot of complex data in many scientific domains such as social networks, computational biology and ...
Pattern mining has been a hot issue since it was first proposed for market basket analysis. Even tho...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
Due to the increasing importance and volume of highly interconnected data, such as in social or info...
In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that descr...
Graph support measures are functions measuring how frequently a given subgraph pattern occurs in a g...
This thesis describes research work undertaken in the field of graph-based knowledge discovery (or g...
A lot of real world problems can be modeled as traversals on graph, and mining from such traversals ...
Data mining techniques have an important implication in social and biological network analysis, were...
Graph pattern mining aims at identifying structures that appear frequently in large graphs, under th...
Due to the availability of rich network data, graph mining techniques have been improved to handle t...
Frequent graph mining is one of famous data mining fields that receive the most attention, and its i...
In recent years, the popularity of graph databases has grown rapidly. This paper focuses on single-g...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
Networks have created many new and exciting areas of scientific inquiry, particularly in the field o...
A lot of complex data in many scientific domains such as social networks, computational biology and ...
Pattern mining has been a hot issue since it was first proposed for market basket analysis. Even tho...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
Due to the increasing importance and volume of highly interconnected data, such as in social or info...
In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that descr...
Graph support measures are functions measuring how frequently a given subgraph pattern occurs in a g...
This thesis describes research work undertaken in the field of graph-based knowledge discovery (or g...
A lot of real world problems can be modeled as traversals on graph, and mining from such traversals ...