Clustering with instance-level constraints (2000)
| Venue: | In Proceedings of the Seventeenth International Conference on Machine Learning |
| Citations: | 116 - 6 self |
BibTeX
@INPROCEEDINGS{Wagstaff00clusteringwith,
author = {Lou Wagstaff and Kiri Lou Wagstaff and Ph. D},
title = {Clustering with instance-level constraints},
booktitle = {In Proceedings of the Seventeenth International Conference on Machine Learning},
year = {2000},
pages = {1103--1110}
}
Years of Citing Articles
OpenURL
Abstract
One goal of research in artificial intelligence is to automate tasks that currently require human expertise; this automation is important because it saves time and brings problems that were previously too large to be solved into the feasible domain. Data analysis, or the ability to identify meaningful patterns and trends in large volumes of data, is an important task that falls into this category. Clustering algorithms are a particularly useful group of data analysis tools. These methods are used, for example, to analyze satellite images of the Earth to identify and categorize different land and foliage types or to analyze telescopic observations to determine what distinct types of astronomical bodies exist and to categorize each observation. However, most existing clustering methods apply general similarity techniques rather than making use of problem-specific information. This dissertation first presents a novel method for converting existing clustering algorithms into constrained clustering algorithms. The resulting methods are able to accept domain-specific information in the form of constraints on the output clusters. At the most general level, each constraint is an instance-level statement







