Please use this identifier to cite or link to this item: https://hdl.handle.net/1959.11/61878
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dc.contributor.authorAvizheh, Mahdiehen
dc.contributor.authorDadpasand, Mohammaden
dc.contributor.authorDehnavi, Elenaen
dc.contributor.authorKeshavarzi, Hamidehen
dc.date.accessioned2024-08-01T04:28:19Z-
dc.date.available2024-08-01T04:28:19Z-
dc.date.issued2023-05-15-
dc.identifier.citationAnimal Production Science, 63(10-11), p. 1095-1104en
dc.identifier.issn1836-5787en
dc.identifier.issn1836-0939en
dc.identifier.urihttps://hdl.handle.net/1959.11/61878-
dc.description.abstract<p><b>Context.</b> An ability to predict calving difficulty could help farmers make better farm-management decisions, thereby improving dairy farm profitability and welfare. <b>Aims.</b> This study aimed to predict calving difficulty in Iranian dairy herds using machine-learning (ML) algorithms and to evaluate sampling methods to deal with imbalanced datasets. <b>Methods.</b> For this purpose, the history records of cows that calved between 2011 and 2021 on two commercial dairy farms were used. Using WEKA software, four commonly used ML algorithms, namely naïve Bayes, random forest, decision trees, and logistic regression, were applied to the dataset. The calving difficulty was considered as a binary trait with 0, normal or unassisted calving, and 1, difficult calving, i.e. receiving any help during parturition from farm personnel involvement to surgical intervention. The average rate of difficult calving was 18.7%, representing an imbalanced dataset. Therefore, down-sampling and cost-sensitive techniques were implemented to tackle this problem. Different models were evaluated on the basis of F-measure and the area under the curve. <b>Key results.</b> The results showed that sampling techniques improved the predictive model (<i>P</i> = 0.07, and <i>P</i> = 0.03, for down-sampling and cost-sensitive techniques respectively). F-measure ranged from 0.387 (decision tree) to 0.426 (logistic regression) with the balanced dataset. However, when applied to the original imbalanced dataset, naïve Bayes had the best performance of up to 0.388 in terms of F-measure. <b>Conclusions.</b> Overall, sampling techniques improved the prediction model compared with original imbalanced dataset. Although prediction models performed worse than expected (due to an imbalanced dataset, and missing values), the implementation of ML algorithms can still lead to an effective method of predicting calving difficulty. <b>Implications.</b> This research indicated the capability of ML algorithms to predict the incidence of calving difficulty within a balanced dataset, but that more explanatory variables (e.g. genetic information) are required to improve the prediction based on an unbalanced original dataset.</p>en
dc.languageenen
dc.publisherCSIRO Publishingen
dc.relation.ispartofAnimal Production Scienceen
dc.rightsAttribution-NonCommercial-NoDerivatives 4.0 International*
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/*
dc.titleApplication of machine-learning algorithms to predict calving difficulty in Holstein dairy cattleen
dc.typeJournal Articleen
dc.identifier.doi10.1071/AN22461en
dcterms.accessRightsUNE Greenen
local.contributor.firstnameMahdiehen
local.contributor.firstnameMohammaden
local.contributor.firstnameElenaen
local.contributor.firstnameHamidehen
local.profile.schoolAnimal Genetics and Breeding Uniten
local.profile.emailedehnavi@une.edu.auen
local.output.categoryC1en
local.record.placeauen
local.record.institutionUniversity of New Englanden
local.publisher.placeAustraliaen
local.format.startpage1095en
local.format.endpage1104en
local.peerreviewedYesen
local.identifier.volume63en
local.identifier.issue10-11en
local.access.fulltextYesen
local.contributor.lastnameAvizhehen
local.contributor.lastnameDadpasanden
local.contributor.lastnameDehnavien
local.contributor.lastnameKeshavarzien
dc.identifier.staffune-id:edehnavien
local.profile.orcid0000-0001-8238-6290en
local.profile.roleauthoren
local.profile.roleauthoren
local.profile.roleauthoren
local.profile.roleauthoren
local.identifier.unepublicationidune:1959.11/61878en
dc.identifier.academiclevelStudenten
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
local.title.maintitleApplication of machine-learning algorithms to predict calving difficulty in Holstein dairy cattleen
local.output.categorydescriptionC1 Refereed Article in a Scholarly Journalen
local.search.authorAvizheh, Mahdiehen
local.search.authorDadpasand, Mohammaden
local.search.authorDehnavi, Elenaen
local.search.authorKeshavarzi, Hamidehen
local.open.fileurlhttps://rune.une.edu.au/web/retrieve/b6897773-bbf8-4b04-bc09-8758aa28b0e1en
local.uneassociationYesen
local.atsiresearchNoen
local.sensitive.culturalNoen
local.year.published2023en
local.fileurl.openhttps://rune.une.edu.au/web/retrieve/b6897773-bbf8-4b04-bc09-8758aa28b0e1en
local.fileurl.openpublishedhttps://rune.une.edu.au/web/retrieve/b6897773-bbf8-4b04-bc09-8758aa28b0e1en
local.subject.for2020300305 Animal reproduction and breedingen
local.subject.seo2020100401 Beef cattleen
local.profile.affiliationtypeExternal Affiliationen
local.profile.affiliationtypeExternal Affiliationen
local.profile.affiliationtypeUNE Affiliationen
local.profile.affiliationtypeExternal Affiliationen
Appears in Collections:Animal Genetics and Breeding Unit (AGBU)
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