Body weight prediction using different data mining algorithms in Thalli sheep: A comparative study

Background and Aim: The Thalli sheep are the main breed of sheep in Pakistan, and an effective method to predict their body weight (BW) using linear body measurements has not yet been determined. Therefore, this study aims to establish an algorithm with the best predictive capability, among the Chi-...

Full description

Bibliographic Details
Main Authors: Ansar Abbas, Muhammad Aman Ullah, Abdul Waheed
Format: Article
Language:English
Published: Veterinary World 2021-09-01
Series:Veterinary World
Subjects:
Online Access:http://www.veterinaryworld.org/Vol.14/September-2021/6.pdf
id doaj-d636890003aa4f0893c7e444c6697644
record_format Article
spelling doaj-d636890003aa4f0893c7e444c66976442021-09-06T04:11:53ZengVeterinary WorldVeterinary World0972-89882231-09162021-09-011492332233810.14202/vetworld.2021.2332-2338Body weight prediction using different data mining algorithms in Thalli sheep: A comparative studyAnsar Abbas0https://orcid.org/0000-0001-7091-325XMuhammad Aman Ullah1https://orcid.org/0000-0002-9624-5576Abdul Waheed2https://orcid.org/0000-0002-0574-8128Department of Statistics , Government Degree College for Boys, Makhdoom Rasheed, Multan, Pakistan.Department of Statistics, Bahauddin Zakariya University, Multan, Pakistan.Department of Livestock and Poultry, Bahauddin Zakariya University, Multan, Pakistan.Background and Aim: The Thalli sheep are the main breed of sheep in Pakistan, and an effective method to predict their body weight (BW) using linear body measurements has not yet been determined. Therefore, this study aims to establish an algorithm with the best predictive capability, among the Chi-square automatic interaction detector (CHAID), exhaustive CHAID, artificial neural network, and classification and regression tree (CART) algorithms, in live BW prediction using selected body measurements in female Pakistani Thalli sheep. Materials and Methods: A total of 152 BW records, including nine continuous predictors (wither height, body length [BL], head length, rump length, tail length, head width, rump width, heart girth [HG], and barrel depth), were utilized. The coefficient of determination (R2), standard deviation ratio, root-mean-square error (RMSE), etc., were calculated for each algorithm. Results: The R2 (%) values ranged from 49.28 (CART) to 64.48 (CHAID). The lowest RMSE was found for CHAID (2.61), and the highest one for CART (3.12). The most significant predictors were the HG of live BW for all algorithms. The heaviest average BW (41.12 kg) was observed in the subgroup of those having a BL of >73.91 cm (Adjusted p=0.045). Conclusion: Among the algorithms, CHAID provided the most appropriate predictive capability in the prediction of live BW for female Thalli sheep. In general, the applied algorithms accurately predicted the BW of Thalli sheep, which can be very helpful in deciding on the standards, available drug doses, and required feed amount for animals.http://www.veterinaryworld.org/Vol.14/September-2021/6.pdfartificial neural networkbody weightclassification and regression treechi-square automatic interaction detectorexhaustive chi-square automatic interaction detectorthalli sheep
collection DOAJ
language English
format Article
sources DOAJ
author Ansar Abbas
Muhammad Aman Ullah
Abdul Waheed
spellingShingle Ansar Abbas
Muhammad Aman Ullah
Abdul Waheed
Body weight prediction using different data mining algorithms in Thalli sheep: A comparative study
Veterinary World
artificial neural network
body weight
classification and regression tree
chi-square automatic interaction detector
exhaustive chi-square automatic interaction detector
thalli sheep
author_facet Ansar Abbas
Muhammad Aman Ullah
Abdul Waheed
author_sort Ansar Abbas
title Body weight prediction using different data mining algorithms in Thalli sheep: A comparative study
title_short Body weight prediction using different data mining algorithms in Thalli sheep: A comparative study
title_full Body weight prediction using different data mining algorithms in Thalli sheep: A comparative study
title_fullStr Body weight prediction using different data mining algorithms in Thalli sheep: A comparative study
title_full_unstemmed Body weight prediction using different data mining algorithms in Thalli sheep: A comparative study
title_sort body weight prediction using different data mining algorithms in thalli sheep: a comparative study
publisher Veterinary World
series Veterinary World
issn 0972-8988
2231-0916
publishDate 2021-09-01
description Background and Aim: The Thalli sheep are the main breed of sheep in Pakistan, and an effective method to predict their body weight (BW) using linear body measurements has not yet been determined. Therefore, this study aims to establish an algorithm with the best predictive capability, among the Chi-square automatic interaction detector (CHAID), exhaustive CHAID, artificial neural network, and classification and regression tree (CART) algorithms, in live BW prediction using selected body measurements in female Pakistani Thalli sheep. Materials and Methods: A total of 152 BW records, including nine continuous predictors (wither height, body length [BL], head length, rump length, tail length, head width, rump width, heart girth [HG], and barrel depth), were utilized. The coefficient of determination (R2), standard deviation ratio, root-mean-square error (RMSE), etc., were calculated for each algorithm. Results: The R2 (%) values ranged from 49.28 (CART) to 64.48 (CHAID). The lowest RMSE was found for CHAID (2.61), and the highest one for CART (3.12). The most significant predictors were the HG of live BW for all algorithms. The heaviest average BW (41.12 kg) was observed in the subgroup of those having a BL of >73.91 cm (Adjusted p=0.045). Conclusion: Among the algorithms, CHAID provided the most appropriate predictive capability in the prediction of live BW for female Thalli sheep. In general, the applied algorithms accurately predicted the BW of Thalli sheep, which can be very helpful in deciding on the standards, available drug doses, and required feed amount for animals.
topic artificial neural network
body weight
classification and regression tree
chi-square automatic interaction detector
exhaustive chi-square automatic interaction detector
thalli sheep
url http://www.veterinaryworld.org/Vol.14/September-2021/6.pdf
work_keys_str_mv AT ansarabbas bodyweightpredictionusingdifferentdataminingalgorithmsinthallisheepacomparativestudy
AT muhammadamanullah bodyweightpredictionusingdifferentdataminingalgorithmsinthallisheepacomparativestudy
AT abdulwaheed bodyweightpredictionusingdifferentdataminingalgorithmsinthallisheepacomparativestudy
_version_ 1717780100103012352