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Laplace Approximation in High-Dimensional Bayesian Regression
[chapter]
2016
Abel Symposia
We consider Bayesian variable selection in sparse high-dimensional regression, where the number of covariates p may be large relative to the sample size n, but at most a moderate number q of covariates are active. Specifically, we treat generalized linear models. For a single fixed sparse model with well-behaved prior distribution, classical theory proves that the Laplace approximation to the marginal likelihood of the model is accurate for sufficiently large sample size n. We extend this
doi:10.1007/978-3-319-27099-9_2
fatcat:mpfs4a2pdjhplbhh5vlhfg44fu