A New Measure Based in the Rough Set Theory to Estimate the Training Set Quality
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Rafael Bello | Ann Nowé | Gladys Casas Cardoso | María Matilde García Lorenzo | Yailé Caballero Mota | Alberto Taboada | A. Nowé | Rafael Bello | Y. Mota | Alberto Taboada-Crispí | M. Lorenzo | G. C. Cardoso
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