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Does modeling causal relationships improve the accuracy of predicting lactation milk yields?

Authors :
Xiao-Lin Wu
Asha M. Miles
Curtis P. Van Tassell
George R. Wiggans
H. Duane Norman
Ransom L. Baldwin, VI
Javier Burchard
João Dürr
Source :
JDS Communications, Vol 4, Iss 5, Pp 358-362 (2023)
Publication Year :
2023
Publisher :
Elsevier, 2023.

Abstract

This study compared 3 correlational (best prediction, linear regression, and feed-forward neural networks) and 2 causal models (recursive structural equation model and recurrent neural networks) for estimating lactation milk yields. The correlational models assumed associations between test-day milk yields (health conditions), while the casual models postulated unidirectional recursive effects between these test-day variables. Wood lactation curves were used to simulate the data and served as a benchmark model. Individual Wood lactation curves provided an excellent parametric interpretation of lactation dynamics, with their prediction accuracies depending on the coverage of the lactation curve dynamics. Best prediction outperformed other models in the absence of mastitis but was suboptimal when mastitis was present and unaccounted for. Recurrent neural networks yielded the highest accuracy when mastitis was present. Although causal models facilitated the inference about the causality underlying lactation, precisely capturing the causal relationships was challenging because the underlying biology was complex. Misspecification of recursive effects in the recursive structural equation model resulted in a loss of accuracy. Hence, modeling causal relationships does not necessarily guarantee improved accuracies. In practice, a parsimonious model is preferred, balancing model complexity and accuracy. In addition to the choice of statistical models, the proper accounting for factors and covariates affecting milk yields is equally crucial.

Details

Language :
English
ISSN :
26669102
Volume :
4
Issue :
5
Database :
Directory of Open Access Journals
Journal :
JDS Communications
Publication Type :
Academic Journal
Accession number :
edsdoj.0b8a8e971a2e466bba197b6b7b1973d6
Document Type :
article
Full Text :
https://doi.org/10.3168/jdsc.2022-0343