Prediction of internal egg quality characteristics and variable selection using regularization methods: ridge, LASSO and elastic net

<p>This study was conducted to determine the inner quality characteristics of eggs using external egg quality characteristics. The variables were selected in order to obtain the simplest model using ridge, LASSO and elastic net regularization methods. For this purpose, measurements of the i...

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Main Authors: M. N. Çiftsüren, S. Akkol
Format: Article
Language:English
Published: Copernicus Publications 2018-07-01
Series:Archives Animal Breeding
Online Access:https://www.arch-anim-breed.net/61/279/2018/aab-61-279-2018.pdf
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spelling doaj-96c1371e98e1418d97a9678361a2d3212020-11-25T01:15:43ZengCopernicus PublicationsArchives Animal Breeding0003-94382363-98222018-07-016127928410.5194/aab-61-279-2018Prediction of internal egg quality characteristics and variable selection using regularization methods: ridge, LASSO and elastic netM. N. Çiftsüren0S. Akkol1Van Yuzuncu Yil University, Graduate School of Science Institute, Department of Animal Science, Van, TurkeyVan Yuzuncu Yil University, Faculty of Agriculture, Department of Animal Science, Biometry and Genetic Unit, Van, Turkey<p>This study was conducted to determine the inner quality characteristics of eggs using external egg quality characteristics. The variables were selected in order to obtain the simplest model using ridge, LASSO and elastic net regularization methods. For this purpose, measurements of the internal and external characteristics of 117 Japanese quail eggs were made. Internal quality characteristics were egg yolk weight and albumen weight; external quality characteristics were egg width, egg length, egg weight, shape index and shell weight. An ordinary least square method was applied to the data. Ridge, LASSO and elastic net regularization methods were performed to remove the multicollinearity of the data. The regression estimating equations of the internal egg quality were significant for all methods (<i>P</i> &lt; 0.01). The goodness of fit of the regression estimating equations for egg yolk weight was 58.34, 59.17 and 59.11&thinsp;% for the ridge, LASSO and elastic net methods, respectively. For egg albumen weight the goodness of fit of the regression estimating equations was 75.60&thinsp;%, 75.94&thinsp;% and 75.81&thinsp;% for the respective ridge, LASSO and elastic net methods. It was revealed that LASSO, including two predictors for both egg yolk weight and egg albumen weight, was the best model with regard to high predictive accuracy.</p>https://www.arch-anim-breed.net/61/279/2018/aab-61-279-2018.pdf
collection DOAJ
language English
format Article
sources DOAJ
author M. N. Çiftsüren
S. Akkol
spellingShingle M. N. Çiftsüren
S. Akkol
Prediction of internal egg quality characteristics and variable selection using regularization methods: ridge, LASSO and elastic net
Archives Animal Breeding
author_facet M. N. Çiftsüren
S. Akkol
author_sort M. N. Çiftsüren
title Prediction of internal egg quality characteristics and variable selection using regularization methods: ridge, LASSO and elastic net
title_short Prediction of internal egg quality characteristics and variable selection using regularization methods: ridge, LASSO and elastic net
title_full Prediction of internal egg quality characteristics and variable selection using regularization methods: ridge, LASSO and elastic net
title_fullStr Prediction of internal egg quality characteristics and variable selection using regularization methods: ridge, LASSO and elastic net
title_full_unstemmed Prediction of internal egg quality characteristics and variable selection using regularization methods: ridge, LASSO and elastic net
title_sort prediction of internal egg quality characteristics and variable selection using regularization methods: ridge, lasso and elastic net
publisher Copernicus Publications
series Archives Animal Breeding
issn 0003-9438
2363-9822
publishDate 2018-07-01
description <p>This study was conducted to determine the inner quality characteristics of eggs using external egg quality characteristics. The variables were selected in order to obtain the simplest model using ridge, LASSO and elastic net regularization methods. For this purpose, measurements of the internal and external characteristics of 117 Japanese quail eggs were made. Internal quality characteristics were egg yolk weight and albumen weight; external quality characteristics were egg width, egg length, egg weight, shape index and shell weight. An ordinary least square method was applied to the data. Ridge, LASSO and elastic net regularization methods were performed to remove the multicollinearity of the data. The regression estimating equations of the internal egg quality were significant for all methods (<i>P</i> &lt; 0.01). The goodness of fit of the regression estimating equations for egg yolk weight was 58.34, 59.17 and 59.11&thinsp;% for the ridge, LASSO and elastic net methods, respectively. For egg albumen weight the goodness of fit of the regression estimating equations was 75.60&thinsp;%, 75.94&thinsp;% and 75.81&thinsp;% for the respective ridge, LASSO and elastic net methods. It was revealed that LASSO, including two predictors for both egg yolk weight and egg albumen weight, was the best model with regard to high predictive accuracy.</p>
url https://www.arch-anim-breed.net/61/279/2018/aab-61-279-2018.pdf
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AT sakkol predictionofinternaleggqualitycharacteristicsandvariableselectionusingregularizationmethodsridgelassoandelasticnet
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