Arbeitspapier
Asymptotically Informative Prior for Bayesian Analysis
In classical Bayesian inference the prior is treated as fixed, it is asymptotically negligible,thus any information contained in the prior is ignored from the asymptotic first order result.However, in practice often an informative prior is summarized from previous similar or the samekind of studies, which contains non-negligible information for the current study. Here, differentfrom traditional Bayesian point of view, we treat such prior to be non-fixed. In particular,we give the data sizes used in previous studies for the prior the same status as the size of thecurrent dataset, viewing both sample sizes as increasing to infinity in the asymptotic study.Thus the prior is asymptotically non-negligible, and its original effects are ressumed under thisview. Consequently, Bayesian inference using such prior is more efficient, as it should be, thanthat regarded under the existing setting. We study some basic properties of Bayesian estimatorsusing such priors under convex losses and the 0—1 loss, and illustrate the method by an examplevia simulation.
- Sprache
-
Englisch
- Erschienen in
-
Series: Tinbergen Institute Discussion Paper ; No. 11-130/4
- Klassifikation
-
Wirtschaft
Econometric and Statistical Methods and Methodology: General
Hypothesis Testing: General
- Thema
-
Asymptotically informative prior
asymptotic efficiency
Bayes estimator
information bound
maximum likelihood estimator
- Ereignis
-
Geistige Schöpfung
- (wer)
-
Yuan, Ao
de Gooijer, Jan G.
- Ereignis
-
Veröffentlichung
- (wer)
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Tinbergen Institute
- (wo)
-
Amsterdam and Rotterdam
- (wann)
-
2011
- Handle
- Letzte Aktualisierung
-
10.03.2025, 11:44 MEZ
Datenpartner
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Objekttyp
- Arbeitspapier
Beteiligte
- Yuan, Ao
- de Gooijer, Jan G.
- Tinbergen Institute
Entstanden
- 2011