Subsampling and aggregation: A solution to the scalability problem in distance-based prediction for mixed-type data
Entity
UAM. Departamento de MatemáticasPublisher
MDPIDate
2021-09-13Citation
10.3390/math9182247
Mathematics 9.18 (2021): 2247
ISSN
2227-7390 (online)DOI
10.3390/math9182247Editor's Version
https://doi.org/10.3390/math9182247Subjects
Classification; Dissimilarities; Ensemble; Big Data; Generalized Linear Model; Gower’s Metric; Machine Learning; MatemáticasRights
© 2021 by the authors. Licensee MDPI, Basel, SwitzerlandAbstract
The distance-based linear model (DB-LM) extends the classical linear regression to the framework of mixed-type predictors or when the only available information is a distance matrix between regressors (as it sometimes happens with big data). The main drawback of these DB methods is their computational cost, particularly due to the eigendecomposition of the Gram matrix. In this context, ensemble regression techniques provide a useful alternative to fitting the model to the whole sample. This work analyzes the performance of three subsampling and aggregation techniques in DB regression on two specific large, real datasets. We also analyze, via simulations, the performance of bagging and DB logistic regression in the classification problem with mixed-type features and large sample sizes
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Google Scholar:Baíllo Moreno, Amparo
-
Grané, Aurea
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