Journal article
A Comparison of Bayesian Models of Heteroscedasticity in Nested Normal Data
A Herschtal, F Foroudi, T Kron, K Mengersen
Communications in Statistics Simulation and Computation | TAYLOR & FRANCIS INC | Published : 2016
Abstract
We consider the fitting of a Bayesian model to grouped data in which observations are assumed normally distributed around group means that are themselves normally distributed, and consider several alternatives for accommodating the possibility of heteroscedasticity within the data. We consider the case where the underlying distribution of the variances is unknown, and investigate several candidate prior distributions for those variances. In each case, the parameters of the candidate priors (the hyperparameters) are themselves given uninformative priors (hyperpriors). The most mathematically convenient model for the group variances is to assign them inverse gamma distributed priors, the inver..
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Awarded by Australian National Health and Medical Research Council (NHMRC)
Funding Acknowledgements
This work was funded by an Australian National Health and Medical Research Council (NHMRC) grant, grant number 1023031.