Retreatment Predictions in Odontology by means of CBR Systems
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Javier Bajo | Juan M. Corchado | Juan Francisco de Paz | Gabriel Villarrubia | Ignacio Aliaga | Livia Campo | Alvaro Enrique Garcia | J. Bajo | J. Corchado | J. F. D. Paz | Ignacio Aliaga | L. Campo | A. Garcia | Gabriel Villarrubia
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