Recently, there arise a large number of graphs with massive sizes and complex structures in many new applications, such as biological networks, social networks, and the Web, demanding powerful data mining methods. Due to inherent noise or data diversity, it is crucial to address the issue of approximation, if one wants to mine patterns that are potentially interesting with tolerable variations. In this paper, we investigate the problem of mining frequent approximate patterns from a massive network and propose a method called gApprox. gApprox not only finds approximate network patterns, which is the key for many knowledge discovery applications on structural data, but also enriches the library of graph mining methodologies by introducing sev...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
89 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2009.We studied the problem of cons...
Bio-data analysis deals with the most vital discovering problem of similarity search and finding rel...
The rapid increase of available DNA, protein, and other biological sequences has made the problem of...
AbstractObjectivesPredicting protein function from the protein–protein interaction network is challe...
In this paper, we define a new research problem for mining approximate repeating patterns (ARP) with...
With ever-growing popularity of social networks, web and bio-networks, mining large frequent pattern...
Abstract—The prediction of protein function is one of the most challenging problems in bioinformatic...
With ever-growing popularity of social networks, web and bio-networks, mining large frequent pattern...
Frequent graph mining has received considerable attention from researchers. Existing algorithms for ...
Mining graph patterns in large networks is critical to a vari-ety of applications such as malware de...
Mining frequent patterns in a single network (graph) poses a number of challenges. Already only to m...
We study a problem of mining frequently occurring periodic patterns with a gap requirement from sequ...
In the recent past, many exact graph mining algorithms have been developed to find frequent patterns...
Large real-world graph (a.k.a network, relational) data are omnipresent, in online media, businesses...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
89 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2009.We studied the problem of cons...
Bio-data analysis deals with the most vital discovering problem of similarity search and finding rel...
The rapid increase of available DNA, protein, and other biological sequences has made the problem of...
AbstractObjectivesPredicting protein function from the protein–protein interaction network is challe...
In this paper, we define a new research problem for mining approximate repeating patterns (ARP) with...
With ever-growing popularity of social networks, web and bio-networks, mining large frequent pattern...
Abstract—The prediction of protein function is one of the most challenging problems in bioinformatic...
With ever-growing popularity of social networks, web and bio-networks, mining large frequent pattern...
Frequent graph mining has received considerable attention from researchers. Existing algorithms for ...
Mining graph patterns in large networks is critical to a vari-ety of applications such as malware de...
Mining frequent patterns in a single network (graph) poses a number of challenges. Already only to m...
We study a problem of mining frequently occurring periodic patterns with a gap requirement from sequ...
In the recent past, many exact graph mining algorithms have been developed to find frequent patterns...
Large real-world graph (a.k.a network, relational) data are omnipresent, in online media, businesses...
During the last decade or so, the amount of data that is generated and becomes publicly available is...
89 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2009.We studied the problem of cons...
Bio-data analysis deals with the most vital discovering problem of similarity search and finding rel...