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  4. Distributional Regression Modeling Via Generalized Additive Models For Location, Scale, And Shape: An Overview Through A Data Set From Learning Analytics
 
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Distributional Regression Modeling Via Generalized Additive Models For Location, Scale, And Shape: An Overview Through A Data Set From Learning Analytics

Date Issued
2022-10-21
Author(s)
Tejo, Mauricio  
Facultad de Ciencias  
Fernando Marmolejo‐Ramos
Marek Brabec
Jakub Kužílek
Srécko Joksimovíc
Vitomir Kovanović
Jorge González
Thomas Kneib
Peter Bühlmann
Lucas Kook
Guillermo Briseño‐Sánchez
Raydonal Ospina
DOI
10.1002/widm.1479
WoS ID
WOS:000870901000001
Abstract
Abstract The advent of technological developments is allowing to gather large amounts of data in several research fields. Learning analytics (LA)/educational data mining has access to big observational unstructured data captured from educational settings and relies mostly on unsupervised machine learning (ML) algorithms to make sense of such type of data. Generalized additive models for location, scale, and shape (GAMLSS) are a supervised statistical learning framework that allows modeling all the parameters of the distribution of the response variable with respect to the explanatory variables. This article overviews the power and flexibility of GAMLSS in relation to some ML techniques. Also, GAMLSS' capability to be tailored toward causality via causal regularization is briefly commented. This overview is illustrated via a data set from the field of LA. This article is categorized under: Application Areas > Education and Learning Algorithmic Development > Statistics Technologies > Machine Learning
Subjects

Computer Science, Art...

Computer Science, The...

Computer Science

OCDE Subjects

Natural Sciences::Phy...

Quartile (Date Issued)
Q2
License
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