Distributional regression modeling via generalized additive models for location, scale, and shape: An overview through a data set from learning analytics
Fernando Marmolejo‐Ramos(University of South Australia), Raydonal Ospina(Industrial University of Santander), Peter Bühlmann(ETH Zurich), Jorge González(Pontificia Universidad Católica de Chile), Guillermo Briseño‐Sánchez(TU Dortmund University), Vitomir Kovanović(University of South Australia), Marek Brabec(Czech Academy of Sciences), Mauricio Tejo(Universidad de Playa Ancha de Ciencias de la Educación), Lucas Kook(ZHAW Zurich University of Applied Sciences), Thomas Kneib(University of Göttingen), Srécko Joksimovíc(University of South Australia), Jakub Kužílek(Humboldt-Universität zu Berlin)
Wiley Interdisciplinary Reviews Data Mining and Knowledge Discovery
October 21, 2022
Cited by 31
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