Title of article :
Strategies for inference robustness in focused modelling
Author/Authors :
D. J. Spiegelhalter & E. C. Marshall، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Advances in computation mean that it is now possible to fit a wide range of complex
models to data, but there remains the problem of selecting a model on which to base reported
inferences. Following an early suggestion of Box & Tiao, it seems reasonable to seek ‘inference
robustness’ in reported models, so that alternative assumptions that are reasonably well
supported would not lead to substantially different conclusions. We propose a four-stage
modelling strategy in which we iteratively assess and elaborate an initial model, measure the
support for each of the resulting family of models, assess the influence of adopting alternative
models on the conclusions of primary interest, and identify whether an approximate model can be
reported. The influence-support plot is then introduced as a tool to aid model comparison. The
strategy is semi-formal, in that it could be embedded in a decision-theoretic framework but
requires substantive input for any specific application. The one restriction of the strategy is that
the quantity of interest, or ‘focus’, must retain its interpretation across all candidate models. It
is, therefore, applicable to analyses whose goal is prediction, or where a set of common model
parameters are of interest and candidate models make alternative distributional assumptions. The
ideas are illustrated by two examples. Technical issues include the calibration of the Kullback–
Leibler divergence between marginal distributions, and the use of alternative measures of support
for the range of models fitted
Keywords :
Influence diagnostics , Model choice , hierarchical models , Markov chain Monte Carlo , Kullback–Leibler divergence , prediction , institutionalcomparisons
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS