Bayesian Predictive Inference for Some Linear Models Under Student-t Errors - Azizur Rahman - Libros - VDM Verlag - 9783639040869 - 12 de junio de 2008
En caso de que portada y título no coincidan, el título será el correcto

Bayesian Predictive Inference for Some Linear Models Under Student-t Errors

Precio
€ 50,99

Pedido desde almacén remoto

Entrega prevista 8 - 19 de ene. de 2026
Los regalos de Navidad se podrán canjear hasta el 31 de enero
Añadir a tu lista de deseos de iMusic

In real life often we need to make inferences about the behaviour of the unobserved responses for a model based on the observed responses from the model. Regression models with normal errors are commonly considered in prediction problems. However, when the underlying distributions have heavier tails, the normal errors assumption fails to allow sufficient probability in the tail areas to make allowance for any extreme value or outliers. As well, it cannot deal with the uncorrelated but not independent observations which are common in time series and econometric studies. In such situations, the Student-t errors assumption is appropriate. Traditionally, a number of statistical methods such as the classical, structural distribution and structural relations approaches can lead to prediction distributions, the Bayesian approach is more sound in statistical theory. This book, therefore, deals with the derivation problems of prediction distributions for some widely used linear models having Student-t errors under the Bayesian approach. Results reveal that our models are robust and the Bayesian approach is competitive with traditional methods. In perturbation analysis, process control, optimization, classification, discordancy testing, interim analysis, speech recognition, online environmental learning and sampling curtailment studies predictive inferences are successfully used.

Medios de comunicación Libros     Paperback Book   (Libro con tapa blanda y lomo encolado)
Publicado 12 de junio de 2008
ISBN13 9783639040869
Editores VDM Verlag
Páginas 88
Dimensiones 150 × 220 × 10 mm   ·   127 g
Lengua Inglés  

Mas por Azizur Rahman

Mostrar todo