GAparsimony: An R package for searching parsimonious models by combining hyperparameter optimization and feature selection
- Martinez-De-Pison, F.J. 1
- Gonzalez-Sendino, R. 1
- Ferreiro, J. 1
- Fraile, E. 1
- Pernia-Espinoza, A. 1
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1
Universidad de La Rioja
info
ISSN: 0302-9743
Ano de publicación: 2018
Volume: 10870 LNAI
Páxinas: 62-73
Tipo: Artigo
beta Ver similares en nube de resultadosOutras publicacións en: Lecture Notes in Computer Science
Resumo
Nowadays, there is an increasing interest in automating KDD processes. Thanks to the increasing power and costs reduction of computation devices, the search of best features and model parameters can be solved with different meta-heuristics. Thus, researchers can be focused in other important tasks like data wrangling or feature engineering. In this contribution, GAparsimony R package is presented. This library implements GA-PARSIMONY methodology that has been published in previous journals and HAIS conferences. The objective of this paper is to show how to use GAparsimony for searching accurate parsimonious models by combining feature selection, hyperparameter optimization, and parsimonious model search. Therefore, this paper covers the cautions and considerations required for finding a robust parsimonious model by using this package and with a regression example that can be easily adapted for another problem, database or algorithm. © Springer International Publishing AG, part of Springer Nature 2018.