Abstract: This paper studies uncertain graph data mining and especially investigates the problem of mining frequent subgraph patterns from uncertain graph data. A data model is introduced for representing uncertainties in graphs, and an expected support is employed to evaluate the significance of subgraph patterns. By using the apriori property of expected support, a depth-first search-based mining algorithm is proposed with an efficient method for computing expected supports and a technique for pruning search space, which reduces the number of subgraph isomorphism testings needed by computing expected support from the exponential scale to the linear scale. Experimental results show that the proposed algorithm is 3 to 5 orders of magnitude...
International audienceLarge graphs are prevalent in social networks, traffic networks, and biology. ...
Data in several applications can be represented as an uncertain graph whose edges are labeled with a...
In recent years, the popularity of graph databases has grown rapidly. This paper focuses on single-g...
Abstract — Studies shows that finding frequent sub-graphs in uncertain graphs database is an NP comp...
In the current era of Big data, high volumes of high-value data---such as social network data---can ...
AbstractDue to advances in technology, high volumes of valuable data can be collected and transmitte...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
Graph data are prevalent in communication networks, social media, and biological networks. These dat...
Graphs are often used as models in very different application areas ranging from networks to molecul...
In recent years, the popularity of graph datasets has grown rapidly. Frequent subgraph mining (FSM) ...
Data in several applications can be represented as an uncertain graph, whose edges are labeled with ...
Many studies have been conducted on seeking the efficient solution for subgraph similarity search ov...
An uncertain graph G = (V,E,p) can be viewed as a probability space whose outcomes (referred to as p...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
AbstractFrequent subgraph mining (FSM) is defined as finding all the subgraphs in a given graph that...
International audienceLarge graphs are prevalent in social networks, traffic networks, and biology. ...
Data in several applications can be represented as an uncertain graph whose edges are labeled with a...
In recent years, the popularity of graph databases has grown rapidly. This paper focuses on single-g...
Abstract — Studies shows that finding frequent sub-graphs in uncertain graphs database is an NP comp...
In the current era of Big data, high volumes of high-value data---such as social network data---can ...
AbstractDue to advances in technology, high volumes of valuable data can be collected and transmitte...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
Graph data are prevalent in communication networks, social media, and biological networks. These dat...
Graphs are often used as models in very different application areas ranging from networks to molecul...
In recent years, the popularity of graph datasets has grown rapidly. Frequent subgraph mining (FSM) ...
Data in several applications can be represented as an uncertain graph, whose edges are labeled with ...
Many studies have been conducted on seeking the efficient solution for subgraph similarity search ov...
An uncertain graph G = (V,E,p) can be viewed as a probability space whose outcomes (referred to as p...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
AbstractFrequent subgraph mining (FSM) is defined as finding all the subgraphs in a given graph that...
International audienceLarge graphs are prevalent in social networks, traffic networks, and biology. ...
Data in several applications can be represented as an uncertain graph whose edges are labeled with a...
In recent years, the popularity of graph databases has grown rapidly. This paper focuses on single-g...