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Body weight prediction of Belgian Blue crossbred using random forest.
Praharani, Lisa; Talib, Chalid; Kusumaningrum, Diana Andrianita; Widiawati, Yeni; Asmarasari, Santiananda Arta; Rusdiana, Supardi; Muttaqin, Zultinur; Sianturi, Ria Sari Gail; Wina, Elizabeth; Sopian, Endang; Arrazy, Aqdi Faturahman; Adiati, Umi; Saputra, Ferdy.
Affiliation
  • Praharani L; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Talib C; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Kusumaningrum DA; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Widiawati Y; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Asmarasari SA; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Rusdiana S; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Muttaqin Z; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Sianturi RSG; Indonesian Research Institute for Animal Production, Bogor, Indonesia.
  • Wina E; Indonesian Research Institute for Animal Production, Bogor, Indonesia.
  • Sopian E; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Arrazy AF; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Adiati U; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
  • Saputra F; Research Center for Animal Husbandry, Research Organization for Agriculture and Food, National Research Innovation Agency of the Republic of Indonesia, Bogor, Indonesia.
J Adv Vet Anim Res ; 11(1): 181-184, 2024 Mar.
Article in En | MEDLINE | ID: mdl-38680810
ABSTRACT

Objective:

The aim of this study was to predict the body weight (BW) of a Belgian Blue X Friesian Holstein (BB X FH) crossbred in Indonesia based on morphometrics using random forest. Materials and

Methods:

A total of 26 BB X FH crossbreds were observed for BW, chest weight (CW), body length (BL), hip height (HH), wither height (WH), and chest girth (CG) from 0, 30, 60, 90, 120, 150, 180, 210, 240, 270, and 300 days of age. Stepwise regression and random forest were performed using R 3.6.1.

Results:

The random forest results show that CG is an important variable in estimating BW, with an important variable value of 24.49%. Likewise, the results obtained by stepwise regression show that CG can be an indicator of selection for the BB X FH crossbred. The R squared value obtained from the regression is 0.83, while the R squared value obtained from the random forest (0.86) is greater than the regression.

Conclusion:

In conclusion, random forest produces a better model than stepwise regression. However, a good simple equation to use to estimate BW is CG.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Adv Vet Anim Res Year: 2024 Document type: Article Affiliation country: Indonesia

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Adv Vet Anim Res Year: 2024 Document type: Article Affiliation country: Indonesia
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