Iterate: A conceptual clustering algorithm for data mining (1998)
| Venue: | IEEE TRANSACTIONS ON SYSTEMS, MAN AND CYBERNETICS |
| Citations: | 17 - 0 self |
BibTeX
@ARTICLE{Biswas98iterate:a,
author = {Gautam Biswas and Jerry B. Weinberg and Douglas H. Fisher},
title = {Iterate: A conceptual clustering algorithm for data mining},
journal = {IEEE TRANSACTIONS ON SYSTEMS, MAN AND CYBERNETICS},
year = {1998},
volume = {28},
number = {2},
pages = {100--111}
}
Years of Citing Articles
OpenURL
Abstract
The data exploration task can be divided into three interrelated subtasks: (i) feature selection, (ii) discovery, and (iii) interpretation. This paper describes an unsupervised discovery method with biases geared toward partitioning objects into clusters that improve interpretability. The algorithm, ITERATE, employs: (i) a data ordering scheme and (ii) an iterative redistribution operator to produce maximally cohesive and distinct clusters. Cohesion or intra-class similarity is measured in terms of the match between individual objects and their assigned cluster prototype. Distinctness or inter-class dissimilarity is measured by an average of the variance of the distribution matchbetween clusters. We demonstrate that interpretability, from a problem solving viewpoint, is addressed by theintra- and interclass measures. Empirical results demonstrate the properties of the discovery algorithm, and its applications to problem solving.







