We study the mining of interesting patterns in the presence of numerical attributes. Instead of the usual discretization methods, we propose the use of rank based measures to score the similarity of sets of numerical attributes. New support measures for numerical data are introduced, based on extensions of Kendall’s tau, and Spearman’s Footrule and rho. We show how these support measures are related. Furthermore, we introduce a novel type of pattern combining numerical and categorical attributes. We give efficient algorithms to find all frequent patterns for the proposed support measures, and evaluate their performance on real-life datasets
© 2012 IEEE. Attribute independence has been taken as a major assumption in the limited research tha...
Numerical analysis naturally finds applications in all fields of engineering and the physical scienc...
We propose a new method for discretization, which uses clustering to determine candidate boundaries....
Learning rules is a common way of extracting useful information from knowledge or data bases. Many ...
In this paper, we propose a method that is able to derive rules involving range associations from nu...
Data mining has been an area of increasing interests during recent years. The association rule disco...
Generating rules from quantitative data has been widely studied ever since Agarwal and Srikanth expl...
Association rules require models to understand their relationship to statistical properties of the d...
We study mining correlations from quantitative databases and show that this is a more effective appr...
Abstract—Knowledge of the association information between the attributes in a data set provides insi...
This paper addresses a novel unsupervised algorithm to rank numerical observations which is importan...
This paper introduces a novel sequence correlation measure that is fully sensitive to both the ranks...
In this work, we study the correlation between attribute sets and the occurrence of dense subgraphs ...
The paper describes a new, context-sensitive discretization algorithm that can be used to completel...
Numerical attribute management is a usual pre-processing task in data mining. Most of the algorithms...
© 2012 IEEE. Attribute independence has been taken as a major assumption in the limited research tha...
Numerical analysis naturally finds applications in all fields of engineering and the physical scienc...
We propose a new method for discretization, which uses clustering to determine candidate boundaries....
Learning rules is a common way of extracting useful information from knowledge or data bases. Many ...
In this paper, we propose a method that is able to derive rules involving range associations from nu...
Data mining has been an area of increasing interests during recent years. The association rule disco...
Generating rules from quantitative data has been widely studied ever since Agarwal and Srikanth expl...
Association rules require models to understand their relationship to statistical properties of the d...
We study mining correlations from quantitative databases and show that this is a more effective appr...
Abstract—Knowledge of the association information between the attributes in a data set provides insi...
This paper addresses a novel unsupervised algorithm to rank numerical observations which is importan...
This paper introduces a novel sequence correlation measure that is fully sensitive to both the ranks...
In this work, we study the correlation between attribute sets and the occurrence of dense subgraphs ...
The paper describes a new, context-sensitive discretization algorithm that can be used to completel...
Numerical attribute management is a usual pre-processing task in data mining. Most of the algorithms...
© 2012 IEEE. Attribute independence has been taken as a major assumption in the limited research tha...
Numerical analysis naturally finds applications in all fields of engineering and the physical scienc...
We propose a new method for discretization, which uses clustering to determine candidate boundaries....