Modelling semi-continuous data using mixture regression models with an application to cattle production yields/ created by Eric J. Belasco and Sujit K. Ghosh
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- unmediated
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- 00218596
- S3 JOU
Item type | Current library | Call number | Vol info | Status | Notes | Date due | Barcode | |
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Main Library - Special Collections | S3 JOU (Browse shelf(Opens below)) | Vol. 150, no.1 (109-122) | Not for loan | For in house use only |
The present paper develops a mixture regression model that allows for distributional flexibility in modelling the likelihood of a semi-continuous outcome that takes on zero value with positive probability while continuous on the positive half of the real line. A multivariate extension is also developed that builds on past multivariate models by systematically capturing the relationship between continuous and semi-continuous variables, while allowing for the semi-continuous variable to be characterized by a mixture model. The flexibility associated with this model provides potential applications in many production system studies. The empirical model is shown to provide a more accurate measure of mortality rates in cattle feedlots, both independently and within a system including other performance and health factors.
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