Given a query graph q, correlated subgraph query intends to find graph structures which are mostly correlated to the query q. This problem is fundamental for many pattern recognition applications involving structured data like graphs. Current available studies on correlation mining from graph data are all designed for static datasets. However, in real-life applications, data may arrive continuously in a streaming fashion with high speed. In this paper we investigate the problem of top-k correlated subgraph query over stream. By employing Hoeffding bound into the candidate discovery process and carefully maintaining a candidate list over stream, a novel algorithm, Hoe-PG, is proposed to incrementally identify the top-k correlated subgraphs i...
In the current era of Big data, high volumes of high-value data---such as social network data---can ...
Recently, there has been considerable interest in computing strongly correlated pairs in large datab...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph pattern matching involves finding exact or approximate matches for a query subgraph in a large...
We propose a new problem of correlation mining from graph databases, called Correlated Graph Search ...
Abstract — Correlation mining has gained great success in many application domains for its ability t...
Correlation mining has gained great success in many application domains for its ability to capture t...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Recently, there has been considerable interest in efficiently computing strongly correlated pairs in...
Frequent graph mining is one of famous data mining fields that receive the most attention, and its i...
Search over graph databases has attracted much attention recently due to its usefulness in many fiel...
| openaire: EC/H2020/654024/EU//SoBigData QC 20180312Given a labeled graph, the frequent-subgraph mi...
Search over graph databases has attracted much attention recently due to its usefulness in many fiel...
We study query processing in large graphs that are fundamental data model underpinning various socia...
In the current era of Big data, high volumes of valuable data can be generated at a high velocity fr...
In the current era of Big data, high volumes of high-value data---such as social network data---can ...
Recently, there has been considerable interest in computing strongly correlated pairs in large datab...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph pattern matching involves finding exact or approximate matches for a query subgraph in a large...
We propose a new problem of correlation mining from graph databases, called Correlated Graph Search ...
Abstract — Correlation mining has gained great success in many application domains for its ability t...
Correlation mining has gained great success in many application domains for its ability to capture t...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Recently, there has been considerable interest in efficiently computing strongly correlated pairs in...
Frequent graph mining is one of famous data mining fields that receive the most attention, and its i...
Search over graph databases has attracted much attention recently due to its usefulness in many fiel...
| openaire: EC/H2020/654024/EU//SoBigData QC 20180312Given a labeled graph, the frequent-subgraph mi...
Search over graph databases has attracted much attention recently due to its usefulness in many fiel...
We study query processing in large graphs that are fundamental data model underpinning various socia...
In the current era of Big data, high volumes of valuable data can be generated at a high velocity fr...
In the current era of Big data, high volumes of high-value data---such as social network data---can ...
Recently, there has been considerable interest in computing strongly correlated pairs in large datab...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...