Adaptability of regression algorithms to the behavior of protein plants

Abstract The behavior of components of protein plant is of vital importance for animals that consume them in their diet. The objective of this research is to evaluate regression algorithms, to determine the behavior of the expressions that best adapt to the procedures of a traditional laboratory and to estimate the chemical components of protein plants, in this sense the MULAN library of java has been used, that contain automatic learning algorithms capable of adapting to dissimilar problems. Three data set were created for each species treated in this study; each of these include the main elements to be evaluate in each experiment, these are delimitings by: secondary metabolites, cell wall components and digestibility element for training files one, two and three, respectively; subsequently, they were evaluated through learning supervised and cross-validation of each to determine the best fit by aRMSE (Average Root Mean Square Error). The learning results were compare with previous experiments, where there was a learning variant that contained in a single dataset all the components to be evaluates in a single prediction. The result of the comparison shows that the lazy algorithms based on instances have a better learning behavior than the others evaluate.

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Main Authors: Estrada-Jiménez,Pedro M., Uvidia-Cabadiana,Hernán A., Herrera-Herrera,Rocío del Carmen, Hernández-Montiel,Luís G., Verdecia-Acosta,Danis M., Ramírez-de la Ribera,Jorge L., Noguera-López,Pedro J., Chacón-Marcheco,Edilberto
Format: Digital revista
Language:English
Published: Universidad UTE 2023
Online Access:http://scielo.senescyt.gob.ec/scielo.php?script=sci_arttext&pid=S1390-65422023000200020
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spelling oai:scielo:S1390-654220230002000202023-08-17Adaptability of regression algorithms to the behavior of protein plantsEstrada-Jiménez,Pedro M.Uvidia-Cabadiana,Hernán A.Herrera-Herrera,Rocío del CarmenHernández-Montiel,Luís G.Verdecia-Acosta,Danis M.Ramírez-de la Ribera,Jorge L.Noguera-López,Pedro J.Chacón-Marcheco,Edilberto Secondary metabolites regression models cell wall nutritional value Abstract The behavior of components of protein plant is of vital importance for animals that consume them in their diet. The objective of this research is to evaluate regression algorithms, to determine the behavior of the expressions that best adapt to the procedures of a traditional laboratory and to estimate the chemical components of protein plants, in this sense the MULAN library of java has been used, that contain automatic learning algorithms capable of adapting to dissimilar problems. Three data set were created for each species treated in this study; each of these include the main elements to be evaluate in each experiment, these are delimitings by: secondary metabolites, cell wall components and digestibility element for training files one, two and three, respectively; subsequently, they were evaluated through learning supervised and cross-validation of each to determine the best fit by aRMSE (Average Root Mean Square Error). The learning results were compare with previous experiments, where there was a learning variant that contained in a single dataset all the components to be evaluates in a single prediction. The result of the comparison shows that the lazy algorithms based on instances have a better learning behavior than the others evaluate.info:eu-repo/semantics/openAccessUniversidad UTEEnfoque UTE v.14 n.2 20232023-06-01info:eu-repo/semantics/articletext/htmlhttp://scielo.senescyt.gob.ec/scielo.php?script=sci_arttext&pid=S1390-65422023000200020en10.29019/enfoqueute.861
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author Estrada-Jiménez,Pedro M.
Uvidia-Cabadiana,Hernán A.
Herrera-Herrera,Rocío del Carmen
Hernández-Montiel,Luís G.
Verdecia-Acosta,Danis M.
Ramírez-de la Ribera,Jorge L.
Noguera-López,Pedro J.
Chacón-Marcheco,Edilberto
spellingShingle Estrada-Jiménez,Pedro M.
Uvidia-Cabadiana,Hernán A.
Herrera-Herrera,Rocío del Carmen
Hernández-Montiel,Luís G.
Verdecia-Acosta,Danis M.
Ramírez-de la Ribera,Jorge L.
Noguera-López,Pedro J.
Chacón-Marcheco,Edilberto
Adaptability of regression algorithms to the behavior of protein plants
author_facet Estrada-Jiménez,Pedro M.
Uvidia-Cabadiana,Hernán A.
Herrera-Herrera,Rocío del Carmen
Hernández-Montiel,Luís G.
Verdecia-Acosta,Danis M.
Ramírez-de la Ribera,Jorge L.
Noguera-López,Pedro J.
Chacón-Marcheco,Edilberto
author_sort Estrada-Jiménez,Pedro M.
title Adaptability of regression algorithms to the behavior of protein plants
title_short Adaptability of regression algorithms to the behavior of protein plants
title_full Adaptability of regression algorithms to the behavior of protein plants
title_fullStr Adaptability of regression algorithms to the behavior of protein plants
title_full_unstemmed Adaptability of regression algorithms to the behavior of protein plants
title_sort adaptability of regression algorithms to the behavior of protein plants
description Abstract The behavior of components of protein plant is of vital importance for animals that consume them in their diet. The objective of this research is to evaluate regression algorithms, to determine the behavior of the expressions that best adapt to the procedures of a traditional laboratory and to estimate the chemical components of protein plants, in this sense the MULAN library of java has been used, that contain automatic learning algorithms capable of adapting to dissimilar problems. Three data set were created for each species treated in this study; each of these include the main elements to be evaluate in each experiment, these are delimitings by: secondary metabolites, cell wall components and digestibility element for training files one, two and three, respectively; subsequently, they were evaluated through learning supervised and cross-validation of each to determine the best fit by aRMSE (Average Root Mean Square Error). The learning results were compare with previous experiments, where there was a learning variant that contained in a single dataset all the components to be evaluates in a single prediction. The result of the comparison shows that the lazy algorithms based on instances have a better learning behavior than the others evaluate.
publisher Universidad UTE
publishDate 2023
url http://scielo.senescyt.gob.ec/scielo.php?script=sci_arttext&pid=S1390-65422023000200020
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