Publication: Probit or Logit? Which is the better model to predict the longevity of seeds?
Loading...
Date
Advisor
Coadvisor
Graduate program
Undergraduate course
Journal Title
Journal ISSN
Volume Title
Publisher
Cambridge Univ Press
Type
Article
Access right
Abstract
The prediction of seed longevity (P50) is traditionally performed by the use of the Probit model. However, due to the fact that the survival data are of binary origin (0,1), the fit of the model can be compromised by the non-normality of the residues. Consequently, this leads to prediction losses, despite the data being partially smoothed by Probit and Logit models. A possibility to reduce the effect of non-normality of the data would be to apply the principles of the central limit theorem, which states that non-normal residues tend to be normal as thensample is increased. The Logit and Probit models differ in their normal and logistic distribution. Therefore, we developed a new estimation procedure by using a small increase of thensample and tested it in the Probit and Logit functions to improve the prediction of P50. The results showed that the calculation of P50 by increasing thensamples from 4 to 6 replicates improved the index of correctness of the prediction. The Logit model presented better performance when compared with the Probit model, indicating that the estimation of P50 is more adequate when the adjustment of the data is performed by the Logit function.
Description
Keywords
central limit theorem, link functions, residual normality, seed conservation, seed viability, soybean
Language
English
Citation
Seed Science Research. Cambridge: Cambridge Univ Press, v. 30, n. 1, p. 49-58, 2020.