DocumentCode :
787109
Title :
Unsupervised learning with mixed numeric and nominal data
Author :
Li, Cen ; Biswas, Gautam
Author_Institution :
Dept. of Comput. Sci., Middle Tennessee State Univ., Murfreesboro, TN, USA
Volume :
14
Issue :
4
fYear :
2002
Firstpage :
673
Lastpage :
690
Abstract :
Presents a similarity-based agglomerative clustering (SBAC) algorithm that works well for data with mixed numeric and nominal features. A similarity measure proposed by D.W. Goodall (1966) for biological taxonomy, that gives greater weight to uncommon feature value matches in similarity computations and makes no assumptions about the underlying distributions of the feature values, is adopted to define the similarity measure between pairs of objects. An agglomerative algorithm is employed to construct a dendrogram, and a simple distinctness heuristic is used to extract a partition of the data. The performance of the SBAC algorithm has been studied on real and artificially-generated data sets. The results demonstrate the effectiveness of this algorithm in unsupervised discovery tasks. Comparisons with other clustering schemes illustrate the superior performance of this approach
Keywords :
data analysis; data mining; feature extraction; pattern clustering; pattern matching; software performance evaluation; statistical analysis; tree data structures; unsupervised learning; χ2 aggregation; algorithm performance; conceptual clustering; data partition extraction; dendrogram; distinctness heuristic; feature weighting; interpretation; knowledge discovery; mixed numeric/nominal data; performance; similarity computations; similarity measure; similarity-based agglomerative clustering algorithm; uncommon feature value matches; underlying feature value distributions; unsupervised discovery tasks; unsupervised learning; Clustering algorithms; Computer aided manufacturing; Data analysis; Data mining; Engines; Partitioning algorithms; Problem-solving; Shape; Taxonomy; Unsupervised learning;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2002.1019208
Filename :
1019208
Link To Document :
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