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M. Aguena

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DES collaboration

A machine learning approach to galaxy properties: Joint redshift - stellar mass probability distributions with Random Forest

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Dec 10, 2020
S. Mucesh, W. G. Hartley, A. Palmese, O. Lahav, L. Whiteway, A. Amon, K. Bechtol, G. M. Bernstein, A. Carnero Rosell, M. Carrasco Kind, A. Choi, K. Eckert, S. Everett, D. Gruen, R. A. Gruendl, I. Harrison, E. M. Huff, N. Kuropatkin, I. Sevilla-Noarbe, E. Sheldon, B. Yanny, M. Aguena, S. Allam, D. Bacon, E. Bertin, S. Bhargava, D. Brooks, J. Carretero, F. J. Castander, C. Conselice, M. Costanzi, M. Crocce, L. N. da Costa, M. E. S. Pereira, J. De Vicente, S. Desai, H. T. Diehl, A. Drlica-Wagner, A. E. Evrard, I. Ferrero, B. Flaugher, P. Fosalba, J. Frieman, J. García-Bellido, E. Gaztanaga, D. W. Gerdes, J. Gschwend, G. Gutierrez, S. R. Hinton, D. L. Hollowood, K. Honscheid, D. J. James, K. Kuehn, M. Lima, H. Lin, M. A. G. Maia, P. Melchior, F. Menanteau, R. Miquel, R. Morgan, F. Paz-Chinchón, A. A. Plazas, E. Sanchez, V. Scarpine, M. Schubnell, S. Serrano, M. Smith, E. Suchyta, G. Tarle, D. Thomas, C. To, T. N. Varga, R. D. Wilkinson

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Machine Learning for Searching the Dark Energy Survey for Trans-Neptunian Objects

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Sep 27, 2020
B. Henghes, O. Lahav, D. W. Gerdes, E. Lin, R. Morgan, T. M. C. Abbott, M. Aguena, S. Allam, J. Annis, S. Avila, E. Bertin, D. Brooks, D. L. Burke, A. CarneroRosell, M. CarrascoKind, J. Carretero, C. Conselice, M. Costanzi, L. N. da Costa, J. DeVicente, S. Desai, H. T. Diehl, P. Doel, S. Everett, I. Ferrero, J. Frieman, J. García-Bellido, E. Gaztanaga, D. Gruen, R. A. Gruendl, J. Gschwend, G. Gutierrez, W. G. Hartley, S. R. Hinton, K. Honscheid, B. Hoyle, D. J. James, K. Kuehn, N. Kuropatkin, J. L. Marshall, P. Melchior, F. Menanteau, R. Miquel, R. L. C. Ogando, A. Palmese, F. Paz-Chinchón, A. A. Plazas, A. K. Romer, C. Sánchez, E. Sanchez, V. Scarpine, M. Schubnell, S. Serrano, M. Smith, M. Soares-Santos, E. Suchyta, G. Tarle, C. To, R. D. Wilkinson

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