Quantitative association rule (QAR) mining has been recognized an influential research problem over the last decade due to the popularity of quantitative databases and the usefulness of association rules in real life. Unlike boolean association rules (BARs), which only consider boolean attributes, QARs consist of quantitative attributes which contain much richer information than the boolean attributes. However, the combination of these quantitative attributes and their value intervals always gives rise to the generation of an explosively large number of itemsets, thereby severely degrading the mining efficiency. In this paper, we propose an information-theoretic approach to avoid unrewarding combinations of both the attributes and their val...
AbstractMany algorithms have been proposed for mining boolean association rules. However, very littl...
Generating rules from quantitative data has been widely studied ever since Agarwal and Srikanth expl...
The goal of data mining is to discover knowledge and reveal new, interesting and previously unknown ...
Quantitative Association Rule (QAR) mining has been recognized an influential research problem due t...
We propose a framework, called MIC, which adopts an information-theoretic approach to address the pr...
We propose a framework, called MIC, which adopts an information-theoretic approach to address the pr...
Existing research on mining quantitative databases mainly focuses on mining associations. However, m...
We study mining correlations from quantitative databases and show that this is a more effective appr...
Many algorithms have been proposed for mining boolean association rules. However, very little work h...
The solution of the mining association rules problem in customer transactions was introduced by Agra...
The solution of the mining association rules problem in customer transactions was introduced by Agra...
Abstract. To avoid the loss of semantic information due to the partition of quantitative values, thi...
Association rules are a key data-mining tool and as such have been well researched. So far, this re...
AbstractInducing association rules is one of the central tasks in data mining applications. Quantita...
[[abstract]]A new approach, called PQAR (Partition-based Quantitative Association Rules mining) algo...
AbstractMany algorithms have been proposed for mining boolean association rules. However, very littl...
Generating rules from quantitative data has been widely studied ever since Agarwal and Srikanth expl...
The goal of data mining is to discover knowledge and reveal new, interesting and previously unknown ...
Quantitative Association Rule (QAR) mining has been recognized an influential research problem due t...
We propose a framework, called MIC, which adopts an information-theoretic approach to address the pr...
We propose a framework, called MIC, which adopts an information-theoretic approach to address the pr...
Existing research on mining quantitative databases mainly focuses on mining associations. However, m...
We study mining correlations from quantitative databases and show that this is a more effective appr...
Many algorithms have been proposed for mining boolean association rules. However, very little work h...
The solution of the mining association rules problem in customer transactions was introduced by Agra...
The solution of the mining association rules problem in customer transactions was introduced by Agra...
Abstract. To avoid the loss of semantic information due to the partition of quantitative values, thi...
Association rules are a key data-mining tool and as such have been well researched. So far, this re...
AbstractInducing association rules is one of the central tasks in data mining applications. Quantita...
[[abstract]]A new approach, called PQAR (Partition-based Quantitative Association Rules mining) algo...
AbstractMany algorithms have been proposed for mining boolean association rules. However, very littl...
Generating rules from quantitative data has been widely studied ever since Agarwal and Srikanth expl...
The goal of data mining is to discover knowledge and reveal new, interesting and previously unknown ...