MEC - Monitoring Clusters' Transitions
MEC - Monitoring Clusters' Transitions
No Thumbnail Available
Date
2010
Authors
João Gama
Márcia Barbosa Oliveira
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
In this paper we address the problem of monitoring the evolution of clusters, which has become an important research issue in recent years. We adopt two main strategies for cluster characterization - representation by enumeration and representation by
comprehension -, and propose the MEC (Monitoring the Evolution of Clusters) framework, which was developed along the lines of the change mining paradigm. MEC includes a taxonomy of various types of cluster transitions, a tracking mechanism that depends on cluster representation, and a transition detection algorithm. Our tracking mechanism can be subdivided in two methods, devised to monitor
clusters' transitions: one based on graph transitions, and another
based on clusters' overlap. These are the most relevant contributions
of this work. To demonstrate the feasibility and applicability of MEC
we present illustrative examples, using datasets from different knowledge
areas, such as Economy and Education. Our results are encouraging and demonstrate the ability of MEC framework to provide an efficient diagnosis of clusters' transitions.