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J. Ramirez

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Statistical Agnostic Regression: a machine learning method to validate regression models

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Feb 23, 2024
Juan M Gorriz, J. Ramirez, F. Segovia, F. J. Martinez-Murcia, C. Jiménez-Mesa, J. Suckling

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A hypothesis-driven method based on machine learning for neuroimaging data analysis

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Feb 17, 2022
JM Gorriz, R. Martin-Clemente, C. G. Puntonet, A. Ortiz, J. Ramirez, J. Suckling

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Uncertainty-driven ensembles of deep architectures for multiclass classification. Application to COVID-19 diagnosis in chest X-ray images

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Nov 27, 2020
Juan E. Arco, A. Ortiz, J. Ramirez, F. J. Martinez-Murcia, Yu-Dong Zhang, Juan M. Gorriz

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Spectral Clustering: An empirical study of Approximation Algorithms and its Application to the Attrition Problem

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Nov 14, 2012
B. Cung, T. Jin, J. Ramirez, A. Thompson, C. Boutsidis, D. Needell

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