Repository logo

Labeling methods for association rule clustering

Loading...
Thumbnail Image

Advisor

Coadvisor

Graduate program

Undergraduate course

Journal Title

Journal ISSN

Volume Title

Publisher

Type

Work presented at event

Access right

Acesso abertoAcesso Aberto

Abstract

Although association mining has been highlighted in the last years, the huge number of rules that are generated hamper its use. To overcome this problem, many post-processing approaches were suggested, such as clustering, which organizes the rules in groups that contain, somehow, similar knowledge. Nevertheless, clustering can aid the user only if good descriptors be associated with each group. This is a relevant issue, since the labels will provide to the user a view of the topics to be explored, helping to guide its search. This is interesting, for example, when the user doesn't have, a priori, an idea where to start. Thus, the analysis of different labeling methods for association rule clustering is important. Considering the exposed arguments, this paper analyzes some labeling methods through two measures that are proposed. One of them, Precision, measures how much the methods can find labels that represent as accurately as possible the rules contained in its group and Repetition Frequency determines how the labels are distributed along the clusters. As a result, it was possible to identify the methods and the domain organizations with the best performances that can be applied in clusters of association rules.

Description

Keywords

Association rules, Clustering, Labeling methods, Post-processing, Association mining, Descriptors, Post processing, Repetition frequency, Information systems

Language

English

Citation

ICEIS 2012 - Proceedings of the 14th International Conference on Enterprise Information Systems, v. 1 DISI, n. AIDSS/-, p. 105-111, 2012.

Related itens

Sponsors

Units

Departments

Undergraduate courses

Graduate programs

Other forms of access