Title
Mining clusters and corresponding interpretable descriptions - a three-stage approach
Abstract
This paper presents a three-stage approach to data mining which puts special emphasis on the visualization and interpretability of the results. In the first stage, the input data are represented by a self-organizing map in order to allow visualization and to reduce the amount of data while removing noise, outliers and missing values. Then this preprocessed information is used to identify and display fuzzy clusters of similarity. Finally, descriptions close to natural language are computed for these clusters in order to provide the analyst with qualitative information. This is accomplished by generating fuzzy rules using an inductive learning method. The proposed approach is applied to three case studies, including image data and real-world data sets. The results illustrate the robustness, intuitiveness and wide applicability of the method.
Year
DOI
Venue
2002
10.1111/1468-0394.00207
EXPERT SYSTEMS
Keywords
Field
DocType
clustering,data analysis,fuzzy logic,inductive learning,self-organizing map
Data mining,Fuzzy clustering,Interpretability,Computer science,Visualization,Fuzzy logic,Robustness (computer science),Self-organizing map,Artificial intelligence,Missing data,Cluster analysis,Machine learning
Journal
Volume
Issue
ISSN
19.0
4.0
0266-4720
Citations 
PageRank 
References 
8
0.74
13
Authors
3
Name
Order
Citations
PageRank
Mario Drobics116915.52
Ulrich Bodenhofer270568.02
Werner Winiwarter336159.20