Mining multiple-level association rules in large databases 论文

1999IEEE Transactions on Knowledge and Data Engineering引用 331
Data Mining Algorithms and ApplicationsRough Sets and Fuzzy LogicImbalanced Data Classification Techniques

摘要

A top-down progressive deepening method is developed for efficient mining of multiple-level association rules from large transaction databases based on the a priori principle. A group of variant algorithms is proposed based on the ways of sharing intermediate results, with the relative performance tested and analyzed. The enforcement of different interestingness measurements to find more interesting rules, and the relaxation of rule conditions for finding "level-crossing" association rules, are also investigated. The study shows that efficient algorithms can be developed from large databases for the discovery of interesting and strong multiple-level association rules.