Predicción de la producción diaria de leche en bovinos Gyr a través de métodos de aprendizaje supervisado
Fecha
2022-12-14Registro en:
Zea Higuera, A. (s.f.). Predicción de la producción diaria de leche en bovinos Gyr a través de métodos de aprendizaje supervisado. [Trabajo de Grado, Universidad Santo Tomás]. Repositorio Institucional.
reponame:Repositorio Institucional Universidad Santo Tomás
instname:Universidad Santo Tomás
Autor
Zea Higuera, Alberto
Institución
Resumen
The Asociación Colombiana de Criadores de Ganado Cebú - ASOCEBU, has interest
in developing a machine to predict total daily milk yield using partial production
measurements in Gyr cattle and, in particular, answering two questions:
1) can a reference predictive method be outperformed by locally developed methods?
2) which one of the two partial records (AM or PM) has a better predictive
performance? Therefore, the objective of this paper was to develop a predictive
machine for daily milk yield in Gyr cattle using partial records, milking interval,
days in milk, and parity (n=13806), by implementing supervised learning methods.
Besides the reference predictive machine, several combinations of input variables
and model or learning method were considered. Arti cial neural networks, support
vector machines, random forests, and linear regression with location parameters
estimated via least squares, or the shrinkage methods Ridge and Lasso were used.
The predictive performance (PP) was assessed through crossvalidation using the
following error functions: square root of mean square error (RMSE) and mean
absolute error (MAE). It was found that an arti cial neural network with a single
hidden layer and the AM partial record, milking interval, parity and days in milk
as input variables had the best PP (RMSE=1.5042, MAE=1.1389), but in general,
the performance of the methods was similar. All machines whose parameters
were learned using local data outperformed the reference method and the morning
partial records showed a better PP than those from the afternoon. These results
permit guiding ASOCEBU's milk control program and generate a "tailormade"
method to predict total daily milk yield of Gyr cattle in Colombia, a relevant
component of the genetic improvement and productivity modelling programs of
this breed.