Comparison of the data mining and machine learning algorithms for predicting the final body weight for Romane sheep breed.

TitleComparison of the data mining and machine learning algorithms for predicting the final body weight for Romane sheep breed.
Publication TypeJournal Article
Year of Publication2023
AuthorsTırınk, C, Önder, H, François, D, Marcon, D, Şen, U, Shaikenova, K, Omarova, K, Tyasi, TLouis
JournalPLoS One
Volume18
Issue8
Paginatione0289348
Date Published2023
ISSN1932-6203
KeywordsAlgorithms, Animals, Artificial Intelligence, Birth Weight, Body Weight, Machine Learning, Sheep, Weaning
Abstract

The current study aimed to predict final body weight (weight of fourth months of age to select the future reproducers) by using birth weight, birth type, sex, suckling weight, age at suckling weight, weaning weight, age at weaning weight, and age of final body weight for the Romane sheep breed. For this purpose, classification and regression tree (CART), multivariate adaptive regression splines (MARS), and support vector machine regression (SVR) algorithms were used for training (80%) and testing (20%) sets. Different data mining and machine learning algorithms were used to predict final body weight of 393 Romane sheep (238 female and 155 male animals) were used with different artificial intelligence algorithms. The best prediction model was obtained by CART model, both training and testing set. Constructed CART models indicated that sex, suckling weight, weaning weight, age of weaning weight, and age of final weight could be used as an indirect selection measure to get a superior sheep flock on the final body weight of Romane sheep. If genetically established, the Romane sheep whose sex is female, age of final weight is over 142 days, and weaning weight is over 28 kg could be chosen for affording genetic improvement in final body weight. In conclusion, the usage of CART procedure may be worthy of reflection for identifying breed standards and choosing superior sheep for meat yield in France.

DOI10.1371/journal.pone.0289348
Alternate JournalPLoS One
PubMed ID37535638
PubMed Central IDPMC10399827
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