Komei Fukuda, Shigemasa Saito, et al.
Discrete Applied Mathematics
We discuss data mining based on association rules for two numeric attributes and one Boolean attribute. For example, in a database of bank customers, "Age" and "Balance" are two numeric attributes, and "CardLoan" is a Boolean attribute. Taking the pair (Age, Balance) as a point in two-dimensional space, we consider an association rule of the form ((Age, Balance) ∈ P) ⇒ (CardLoan = Yes), which implies that bank customers whose ages and balances fall in a planar region P tend to use card loan with a high probability. We consider two classes of regions, rectangles and admissible (i.e. connected and x-monotone) regions. For each class, we propose efficient algorithms for computing the regions that give optimal association rules for gain, support, and confidence, respectively. We have implemented the algorithms for admissible regions, and constructed a system for visualizing the rules.
Komei Fukuda, Shigemasa Saito, et al.
Discrete Applied Mathematics
Takeshi Fukuda, Yasuhiko Morimoto, et al.
ACM TODS
Takeshi Tokuyama, Jun Nakano
SODA 1992
Yuichi Asahiro, Kazuo Iwama, et al.
Journal of Algorithms