Machine Learning and Interpretation in Neuroimaging : International Workshop, MLINI 2011, Held at NIPS 2011, Sierra Nevada, Spain, December 16-17, 2011, Revised Selected and Invited Contributions

Brain imaging brings together the technology, methodology, research questions and approaches of a wide range of scientific fields including physics, statistics, computer science, neuroscience, biology, and engineering. Thus, methodological and technological advances that enable us to obtain measurem...

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Auteurs principaux : Langs Georg (Directeur de publication), Rish Irina (Directeur de publication), Grosse-Wentrup Moritz (Directeur de publication), Murphy Brian (Directeur de publication)
Format : Livre
Langue : anglais
Titre complet : Machine Learning and Interpretation in Neuroimaging : International Workshop, MLINI 2011, Held at NIPS 2011, Sierra Nevada, Spain, December 16-17, 2011, Revised Selected and Invited Contributions / edited by Georg Langs, Irina Rish, Moritz Grosse-Wentrup, Brian Murphy.
Publié : Berlin, Heidelberg : Springer Berlin Heidelberg , 2012
Cham : Springer Nature
Collection : Lecture Notes in Artificial Intelligence ; 7263
Accès en ligne : Accès Nantes Université
Accès direct soit depuis les campus via le réseau ou le wifi eduroam soit à distance avec un compte @etu.univ-nantes.fr ou @univ-nantes.fr
Sujets :
Documents associés : Autre format: Machine Learning and Interpretation in Neuroimaging
Autre format: Machine Learning and Interpretation in Neuroimaging
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