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A novel grammar-based genetic programming approach to clustering
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Proceedings of the 2005 ACM symposium on Applied computing table of contents
Santa Fe, New Mexico
SESSION: Evolutionary computation and optimization (ECO) table of contents
Pages: 928 - 932  
Year of Publication: 2005
ISBN:1-58113-964-0
Authors
I. De Falco  ICAR - CNR, Naples, Italy
E. Tarantino  ICAR - CNR, Naples, Italy
A. Delia Cioppa  University of Salerno, Fisciano (SA), Italy
F. Gagliardi  West-Sud s.r.l., Battipaglia (SA) Italy
Sponsor
SIGAPP: ACM Special Interest Group on Applied Computing
Publisher
ACM  New York, NY, USA
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ABSTRACT

Most of the classical methods for clustering analysis require the user setting of number of clusters. To surmount this problem, in this paper a grammar-based Genetic Programming approach to automatic data clustering is presented. An innovative clustering process is conceived strictly linked to a novel cluster representation which provides intelligible information on patterns. The efficacy of the implemented partitioning system is estimated on a medical domain by exploiting expressly defined evaluation indices. Furthermore, a comparison with other clustering tools is performed.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

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Collaborative Colleagues:
I. De Falco: colleagues
E. Tarantino: colleagues
A. Delia Cioppa: colleagues
F. Gagliardi: colleagues