Abstract
SUMMARY A Bayesian decision-theoretic framework is used to define the influence of observations when fitting a regression model to data. Measures assessing an observation's influence on the posterior risk depend on the specification of the underlying loss function and prior assumptions. Illustrations are given for normal linear regression models.
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More From: Journal of the Royal Statistical Society Series B: Statistical Methodology
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