We demonstrate the use of a visual data-mining tool for non-technical domain experts within organizations to facilitate the extraction of meaningful information and knowledge from in-house databases. The tool is mainly based on the basic notion of grouping association rules. Association rules are useful in discovering items that are frequently found together. However in many applications, rules with lower frequencies are often interesting for the user. Grouping of association rules is one way to overcome the rare item problem. However some groups of association rules are too large for ease of understanding. In this chapter we propose a method for clustering categorical data based on the conditional probabilities of association rules for dat...
Abstract: Association rule mining is a significant research topic in the knowledge discovery area. I...
Association rule (AR) mining represents a challenge in the field of data mining. Mining ARs using tr...
Abstract. A common issue in cluster analysis is that there is no single correct answer to the number...
Although Parallel Sets, a popular categorical data visualization technique, intuitively reveals the ...
We investigate the problem of mining interesting association rules over a pair of categorical attrib...
Association Rules are one of the most widespread data mining tools because they can be easily mined...
Association Rules are one of the most widespread data mining tools because they can be easily mined,...
Clustering is an activity of finding abstractions from data [1]. These abstractions are mainly used ...
Association rules mining is one of several ways of knowledge discovery in databases. Paradoxically, ...
The visualization techniques are very important tools for data mining processes. They are widely app...
Abstract- In Data Mining, the usefulness of association rules is strongly limited by the huge amount...
Although association mining has been highlighted in the last years, the huge number of rules that ar...
Generating rules from quantitative data has been widely studied ever since Agarwal and Srikanth expl...
The main goal of cluster analysis is to classify elements into groupsbased on their similarity. Clus...
A method to analyse links between binary attributes in a large sparse data set is proposed. Initiall...
Abstract: Association rule mining is a significant research topic in the knowledge discovery area. I...
Association rule (AR) mining represents a challenge in the field of data mining. Mining ARs using tr...
Abstract. A common issue in cluster analysis is that there is no single correct answer to the number...
Although Parallel Sets, a popular categorical data visualization technique, intuitively reveals the ...
We investigate the problem of mining interesting association rules over a pair of categorical attrib...
Association Rules are one of the most widespread data mining tools because they can be easily mined...
Association Rules are one of the most widespread data mining tools because they can be easily mined,...
Clustering is an activity of finding abstractions from data [1]. These abstractions are mainly used ...
Association rules mining is one of several ways of knowledge discovery in databases. Paradoxically, ...
The visualization techniques are very important tools for data mining processes. They are widely app...
Abstract- In Data Mining, the usefulness of association rules is strongly limited by the huge amount...
Although association mining has been highlighted in the last years, the huge number of rules that ar...
Generating rules from quantitative data has been widely studied ever since Agarwal and Srikanth expl...
The main goal of cluster analysis is to classify elements into groupsbased on their similarity. Clus...
A method to analyse links between binary attributes in a large sparse data set is proposed. Initiall...
Abstract: Association rule mining is a significant research topic in the knowledge discovery area. I...
Association rule (AR) mining represents a challenge in the field of data mining. Mining ARs using tr...
Abstract. A common issue in cluster analysis is that there is no single correct answer to the number...