Project Details
Description
Due to the *digital transformation**, the amount of data
collected is rapidly increasing in many fields of application. With „Big
Data“ available, deviations from simple standard models can usually be
detected, and it becomes tempting to consider more complex models
instead. Despite the increase in computational power, classical
statistical methods such as maximum likelihood and Bayesian inference,
as well as modern simulation based methods (e.g. approximate maximum
likelihood, approximate Bayesian computation, indirect inference), often
reach limits when applied in the context of such complex statistical
models. Often a trade-off has to be found between exploiting most of
the relevant information in the data, and the computational feasibility.
Both a clever algorithmic implementation, and speed improving concepts
(such as importance sampling) can also help to obtain results with
reasonable computational effort.
| Status | Finished |
|---|---|
| Effective start/end date | 01.12.2014 → 31.12.2025 |
Fields of science
- 101024 Probability theory
- 305907 Medical statistics
- 102009 Computer simulation
- 502051 Economic statistics
- 101018 Statistics
- 101029 Mathematical statistics
- 509 Other Social Sciences
- 504006 Demography
- 504004 Population statistics
- 105108 Geostatistics
- 509013 Social statistics
- 102035 Data science
- 101026 Time series analysis
- 106007 Biostatistics
- 102037 Visualisation
- 502025 Econometrics
- 504007 Empirical social research
- 101007 Financial mathematics
JKU Focus areas
- Sustainable Development: Responsible Technologies and Management
- Digital Transformation
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Bayesian inference of multiple Ising models for heterogeneous public opinion survey networks
Avalos-Pacheco, A., Lazzerini, A., Lupparelli, M. & Stingo, F. C., 01 Dec 2025, In: Journal of the Royal Statistical Society, Series C (Applied Statistics). 74, 5, p. 1395-1426 32 p., qlaf028.Research output: Contribution to journal › Article › peer-review
Open Access -
Adaptive Multiple Comparisons with the Best
Chen, H., Brannath, W. & Futschik, A., Sept 2024, In: Biometrical Journal. 66, 6, p. 11 11 p., e202300242.Research output: Contribution to journal › Article › peer-review
Open Access -
An Almost Infinite Sites Model
Avalos Pacheco, A., Cronjäger, M. C., Jenkins, P. & Hein, J., 2024, In: Theoretical Population Biology. 160, p. 49-61 13 p.Research output: Contribution to journal › Article › peer-review
Activities
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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
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Detecting Selection with Multi-Locus Wright-Fisher models
Futschik, A. (Speaker)
30 Aug 2024Activity: Talk or presentation › Contributed talk › science-to-science