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research article
Saddlepoint approximation for mixture models
2009
Two-component mixture distributions with one component a point mass and the other a continuous density may be used as priors for Bayesian inference when sparse representation of an underlying signal is required. We show how saddlepoint approximation in such models can yield highly accurate quantiles for posterior distributions, and illustrate this numerically, using wavelet regression with point mass/Laplace and point mass/normal prior distributions.
Type
research article
Web of Science ID
WOS:000266344300017
Authors
Publication date
2009
Published in
Volume
96
Start page
479
End page
486
Peer reviewed
REVIEWED
EPFL units
Available on Infoscience
May 21, 2009
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