Recently, there has been considerable interest in computing strongly correlated pairs in large databases. Most previous studies require the specification of a minimum correlation threshold to perform the computation. However, it may be difficult for users to provide an appropriate threshold in practice, since different data sets typically have different characteristics. To this end, we propose an alternative task: mining the top-k strongly correlated pairs. In this paper, we identify a 2-D monotone property of an upper bound of Pearson’s correlation coefficient and develop an efficient algorithm, called TOP-COP to exploit this property to effectively prune many pairs even without computing their correlation coefficients. Our experimental re...
We study mining correlations from quantitative databases and show that this is a more effective appr...
Given a query graph q, correlated subgraph query intends to find graph structures which are mostly c...
Given a set of data objects, correlation computing refers to the problem of efficiently finding grou...
Recently, there has been considerable interest in efficiently computing strongly correlated pairs in...
Past attempts to mine transactional databases for strongly correlated item pairs have been beset by ...
Given a user-specified minimum correlation threshold and a market basket database with N items and T...
The problem of finding highly correlated pairs is to output all item pairs whose (Pearson) correlati...
Mining high dimensional data is an urgent problem of great practical importance. Although some data ...
We study the problem of mining correlated patterns. Correlated patterns have advantages over associa...
We propose a new problem of correlation mining from graph databases, called Correlated Graph Search ...
Correlation mining has gained great success in many application domains for its ability to capture t...
This paper addresses some of the foundational issues associated with discovering the best few corre-...
Abstract — Correlation mining has gained great success in many application domains for its ability t...
There have been many studies on efficient discovery of frequent patterns in large databases. The usu...
Abstract—Most of graph pattern mining algorithms focus on finding frequent subgraphs and its compact...
We study mining correlations from quantitative databases and show that this is a more effective appr...
Given a query graph q, correlated subgraph query intends to find graph structures which are mostly c...
Given a set of data objects, correlation computing refers to the problem of efficiently finding grou...
Recently, there has been considerable interest in efficiently computing strongly correlated pairs in...
Past attempts to mine transactional databases for strongly correlated item pairs have been beset by ...
Given a user-specified minimum correlation threshold and a market basket database with N items and T...
The problem of finding highly correlated pairs is to output all item pairs whose (Pearson) correlati...
Mining high dimensional data is an urgent problem of great practical importance. Although some data ...
We study the problem of mining correlated patterns. Correlated patterns have advantages over associa...
We propose a new problem of correlation mining from graph databases, called Correlated Graph Search ...
Correlation mining has gained great success in many application domains for its ability to capture t...
This paper addresses some of the foundational issues associated with discovering the best few corre-...
Abstract — Correlation mining has gained great success in many application domains for its ability t...
There have been many studies on efficient discovery of frequent patterns in large databases. The usu...
Abstract—Most of graph pattern mining algorithms focus on finding frequent subgraphs and its compact...
We study mining correlations from quantitative databases and show that this is a more effective appr...
Given a query graph q, correlated subgraph query intends to find graph structures which are mostly c...
Given a set of data objects, correlation computing refers to the problem of efficiently finding grou...