Please use this identifier to cite or link to this item: https://hdl.handle.net/1959.11/51904
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dc.contributor.authorShahinfar, Salehen
dc.contributor.authorKelman, Khamaen
dc.contributor.authorKahn, Lewisen
dc.date.accessioned2022-05-03T02:23:40Z-
dc.date.available2022-05-03T02:23:40Z-
dc.date.issued2019-01-
dc.identifier.citationComputers and Electronics in Agriculture, v.156, p. 159-177en
dc.identifier.issn1872-7107en
dc.identifier.issn0168-1699en
dc.identifier.urihttps://hdl.handle.net/1959.11/51904-
dc.description.abstract<p>Currently hot carcass weight (HCW) and fat score jointly indicate the price grid for sheep meat in Australia. However, experts in the field believe that soon, yield and quality traits such as intramuscular fat (IMF), greville rule fat depth (GRFAT), computed tomography lean meat yield (CTLEAN), and loin weight (LW) are likely to play a role in pricing. Having an accurate prediction of these traits earlier in the life of an animal will allow sheep producers to adjust their management practices in order to achieve the target market requirements. Management, genetics, pasture and climate factors, influence these traits directly and epistatically. Traditional prediction methods may not be powerful enough to capture complex interactions while avoiding overfitting. In this case, learning algorithms that can learn from the current data to predict the animal’s future performance offers promise. In this study, five different types of Machine Learning (ML) algorithm, namely Deep Learning (DL), Gradient Boosting Tree (GBT), K-Nearest Neighbour (KNN), Model Tree (MT), and Random Forest (RF) were employed to predict HCW, IMF, GRFAT, LW and CTLEAN and their performances were compared against linear regression (LR) as the gold standard of multinomial prediction. Four scenarios representing different numbers of weight recordings -from a total of 9 weight measures taken between birth (WT1) and pre-slaughter (WT9)- were used to inform the algorithms and all models were trained and tested under equal conditions with identical training and testing sets. Selection of the most effective subset of predictor features were completed via greedy stepwise search among all the available features jointly with expert opinion. In predicting all the traits, RF was superior while LR and KNN showed the lowest prediction performance. When using the final model for predicting on an independent test set, the scenario with the most accurate prediction performance differed across traits. IMF and GRFAT were most accurately predicted when using birth, weaning, and pre-slaughter weights, while the most accurate scenario for HCW, LW and CTLEAN utilised weaning, six monthly weight measures after weaning and pre-slaughter weight. Across all scenarios the least accurate prediction was for IMF.</p>en
dc.languageenen
dc.publisherElsevier BVen
dc.relation.ispartofComputers and Electronics in Agricultureen
dc.titlePrediction of sheep carcass traits from early-life records using machine learningen
dc.typeJournal Articleen
dc.identifier.doi10.1016/j.compag.2018.11.021en
dc.subject.keywordsSheepen
dc.subject.keywordsDeep learningen
dc.subject.keywordsCarcass weighten
dc.subject.keywordsIntramuscular faten
dc.subject.keywordsAgriculture, Multidisciplinaryen
dc.subject.keywordsComputer Science, Interdisciplinary Applicationsen
dc.subject.keywordsAgricultureen
dc.subject.keywordsComputer Scienceen
dc.subject.keywordsMachine learningen
local.contributor.firstnameSalehen
local.contributor.firstnameKhamaen
local.contributor.firstnameLewisen
local.profile.schoolSchool of Science and Technologyen
local.profile.schoolSchool of Environmental and Rural Scienceen
local.profile.emailsshahinf@une.edu.auen
local.profile.emaillkahn3@une.edu.auen
local.output.categoryC1en
local.record.placeauen
local.record.institutionUniversity of New Englanden
local.publisher.placeNetherlandsen
local.format.startpage159en
local.format.endpage177en
local.identifier.scopusid85057070054en
local.peerreviewedYesen
local.identifier.volume156en
local.contributor.lastnameShahinfaren
local.contributor.lastnameKelmanen
local.contributor.lastnameKahnen
dc.identifier.staffune-id:sshahinfen
dc.identifier.staffune-id:lkahn3en
local.profile.orcid0000-0002-3679-4530en
local.profile.roleauthoren
local.profile.roleauthoren
local.profile.roleauthoren
local.identifier.unepublicationidune:1959.11/51904en
local.date.onlineversion2018-11-26-
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
local.title.maintitlePrediction of sheep carcass traits from early-life records using machine learningen
local.relation.fundingsourcenoteSupport for this project was provided by the University of New England and the Sheep CRC Ltd, Australia.en
local.output.categorydescriptionC1 Refereed Article in a Scholarly Journalen
local.search.authorShahinfar, Salehen
local.search.authorKelman, Khamaen
local.search.authorKahn, Lewisen
local.uneassociationYesen
local.atsiresearchNoen
local.sensitive.culturalNoen
local.identifier.wosid000456754100016en
local.year.available2018en
local.year.published2019en
local.fileurl.closedpublishedhttps://rune.une.edu.au/web/retrieve/8e76ac12-c0ec-4768-aeef-a07abc60ddccen
local.subject.for2020300399 Animal production not elsewhere classifieden
local.subject.seo2020280101 Expanding knowledge in the agricultural, food and veterinary sciencesen
Appears in Collections:Journal Article
School of Environmental and Rural Science
School of Science and Technology
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