TY - JOUR
T1 - Posterior Manifolds over Prior Parameter Regions
T2 - Beyond Pointwise Sensitivity Assessments for Posterior Statistics from MCMC Inference
AU - Jacobi, Liana
AU - Kwok, Chun Fung
AU - Ramírez-Hassan, Andrés
AU - Nghiem, Nhung
N1 - Publisher Copyright:
© 2023 the author(s), published by De Gruyter, Berlin/Boston.
PY - 2024/4
Y1 - 2024/4
N2 - Increases in the use of Bayesian inference in applied analysis, the complexity of estimated models, and the popularity of efficient Markov chain Monte Carlo (MCMC) inference under conjugate priors have led to more scrutiny regarding the specification of the parameters in prior distributions. Impact of prior parameter assumptions on posterior statistics is commonly investigated in terms of local or pointwise assessments, in the form of derivatives or more often multiple evaluations under a set of alternative prior parameter specifications. This paper expands upon these localized strategies and introduces a new approach based on the graph of posterior statistics over prior parameter regions (sensitivity manifolds) that offers additional measures and graphical assessments of prior parameter dependence. Estimation is based on multiple point evaluations with Gaussian processes, with efficient selection of evaluation points via active learning, and is further complemented with derivative information. The application introduces a strategy to assess prior parameter dependence in a multivariate demand model with a high dimensional prior parameter space, where complex prior-posterior dependence arises from model parameter constraints. The new measures uncover a considerable prior dependence beyond parameters suggested by theory, and reveal novel interactions between the prior parameters and the elasticities.
AB - Increases in the use of Bayesian inference in applied analysis, the complexity of estimated models, and the popularity of efficient Markov chain Monte Carlo (MCMC) inference under conjugate priors have led to more scrutiny regarding the specification of the parameters in prior distributions. Impact of prior parameter assumptions on posterior statistics is commonly investigated in terms of local or pointwise assessments, in the form of derivatives or more often multiple evaluations under a set of alternative prior parameter specifications. This paper expands upon these localized strategies and introduces a new approach based on the graph of posterior statistics over prior parameter regions (sensitivity manifolds) that offers additional measures and graphical assessments of prior parameter dependence. Estimation is based on multiple point evaluations with Gaussian processes, with efficient selection of evaluation points via active learning, and is further complemented with derivative information. The application introduces a strategy to assess prior parameter dependence in a multivariate demand model with a high dimensional prior parameter space, where complex prior-posterior dependence arises from model parameter constraints. The new measures uncover a considerable prior dependence beyond parameters suggested by theory, and reveal novel interactions between the prior parameters and the elasticities.
KW - Bayesian robustness
KW - Gaussian process
KW - prior elicitation
KW - sensitivity analysis
UR - http://www.scopus.com/inward/record.url?scp=85181017575&partnerID=8YFLogxK
U2 - 10.1515/snde-2022-0116
DO - 10.1515/snde-2022-0116
M3 - Article
AN - SCOPUS:85181017575
SN - 1081-1826
VL - 28
SP - 403
EP - 434
JO - Studies in Nonlinear Dynamics and Econometrics
JF - Studies in Nonlinear Dynamics and Econometrics
IS - 2
ER -