A classification of data by using the genetic algorithm computational paradigm is proposed. The best data partition is defined to be the one minimizing the sum of Pythagorean distances between each datum in a cluster and the relative center of class or center of mass. Background is given, and the relevant genetic algorithm description is provided. The model for the genetic application is presented. Simulation results confirm genetic algorithms to be powerful tools for the solution of optimization problems.

Cluster partitioning in image analysis classification: A genetic algorithm approach / Alippi, C.; Cucchiara, R.. - (1992), pp. 139-144. (Intervento presentato al convegno 6th Annual European Computer Conference on Computer Systems and Software Engineering, CompEuro 1992 tenutosi a Netherlands Congress Centre, nld nel 1992) [10.1109/CMPEUR.1992.218520].

Cluster partitioning in image analysis classification: A genetic algorithm approach

Cucchiara R.
1992

Abstract

A classification of data by using the genetic algorithm computational paradigm is proposed. The best data partition is defined to be the one minimizing the sum of Pythagorean distances between each datum in a cluster and the relative center of class or center of mass. Background is given, and the relevant genetic algorithm description is provided. The model for the genetic application is presented. Simulation results confirm genetic algorithms to be powerful tools for the solution of optimization problems.
1992
6th Annual European Computer Conference on Computer Systems and Software Engineering, CompEuro 1992
Netherlands Congress Centre, nld
1992
139
144
Alippi, C.; Cucchiara, R.
Cluster partitioning in image analysis classification: A genetic algorithm approach / Alippi, C.; Cucchiara, R.. - (1992), pp. 139-144. (Intervento presentato al convegno 6th Annual European Computer Conference on Computer Systems and Software Engineering, CompEuro 1992 tenutosi a Netherlands Congress Centre, nld nel 1992) [10.1109/CMPEUR.1992.218520].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1247291
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