Project Details
Description
The Bayesian paradigm provides a coherent and unified approach to
problems of statistical inference such as parameter estimation,
hypothesis testing, prediction, or model discrimination within a
decision-theoretic framework.
Bayesian inference for complex models heavily relies on computationally
intensive methods.
At the IFAS we are currently working on Bayesian modelling of
categorical and mixed data, Bayesian estimation of mixture and
treatment effects models, Bayesian model selection and approximate Bayesian
computation for models with intractable likelihoods.
| Status | Finished |
|---|---|
| Effective start/end date | 01.01.2012 → 31.12.2025 |
Fields of science
- 101024 Probability theory
- 504 Sociology
- 305 Other Human Medicine, Health Sciences
- 106 Biology
- 502 Economics
- 105 Geosciences
- 102009 Computer simulation
- 103 Physics, Astronomy
- 101 Mathematics
- 101018 Statistics
- 101029 Mathematical statistics
- 509 Other Social Sciences
- 504006 Demography
- 305907 Medical statistics
- 502051 Economic statistics
- 504004 Population statistics
- 105108 Geostatistics
- 509013 Social statistics
- 102035 Data science
- 101026 Time series analysis
- 106007 Biostatistics
- 102037 Visualisation
- 303007 Epidemiology
- 303040 Health services research
- 502025 Econometrics
- 504007 Empirical social research
- 101007 Financial mathematics
JKU Focus areas
- Sustainable Development: Responsible Technologies and Management
- Digital Transformation
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Bayesianische Modellwahl
Wagner, H., Malsiner Walli, G. & Hofmarcher, P., Mar 2024, Moderne Verfahren der Angewandten Statistik. Jan Gertheiss und Matthias Schmid (ed.). Springer, p. 30 30 p.Research output: Chapter in Book/Report/Conference proceeding › Chapter › peer-review
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Shrinkage in a Bayesian Panel Data Model with Time-Varying Coefficients
Pfeiler, R. & Wagner, H., 2024, Developments in Statistical Modelling. Jochen Einbeck, Hyeyoung Maeng, Emmanuel Ogundimu, Konstantinos Perrakis (ed.). Cham, Schweiz: Springer, p. 109-115 7 p.Research output: Chapter in Book/Report/Conference proceeding › Conference proceedings › peer-review
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Factor-augmented Bayesian treatment effects models for panel outcomes
Wagner, H., Frühwirth-Schnatter, S. & Jacobi, L., Oct 2023, In: Econometrics and Statistics. 28, p. 63-80 18 p.Research output: Contribution to journal › Article › peer-review
Open Access
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Bayesian prediction design for physical experiments informed by computer experiments
Hainy, M. (Speaker) & Zhu, H. (Speaker)
24 Jun 2025Activity: Talk or presentation › Poster presentation › science-to-science
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Network inference in a stochastic multi-population neural mass model via approximate Bayesian computation
Tubikanec, I. (Speaker)
28 Nov 2024Activity: Talk or presentation › Invited talk › science-to-science
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Network inference in a stochastic multi-population neural mass model via approximate Bayesian computation
Tubikanec, I. (Speaker)
05 Sept 2024Activity: Talk or presentation › Invited talk › science-to-science