Risorsa Analitica di Monografia

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In this paper, a graph classification approach based on a multi–objective genetic algorithm is presented. The method consists in the learning of sets composed of synthetic graph prototypes which are used for a classification step. These learning graphs are generated by simultaneously maximizing the recognition rate while minimizing the confusion rate. Using such an approach the algorithm provides a range of solutions, the couples (confusion, recognition) which suit to the needs of the system. Experiments are performed on real data sets, representing 10 symbols. These tests demonstrate the interest to produce prototypes instead of finding representatives which simply belong to the data set

# Istituto/Sede Collocazione Inventario patrimoniale
Area della ricerca di Genova, Servizio di Documentazione Scientifica Sede di Genova

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