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41 changes: 41 additions & 0 deletions README.md
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Expand Up @@ -289,3 +289,44 @@ available for free at: https://arxiv.org/abs/2302.09125

## Support
This work is supported by the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) under Germany’s Excellence Strategy -– EXC-2181 - 390900948 (the Heidelberg Cluster of Excellence STRUCTURES) and -- EXC-2075 - 390740016 (the Stuttgart Cluster of Excellence SimTech), the Informatics for Life initiative funded by the Klaus Tschira Foundation, and Google Cloud through the Academic Research Grants program.


# Citing BayesFlow

You can cite BayesFlow along the lines of:

- We estimated the approximate posterior distribution with neural posterior estimation and learned summary statistics (NPE; Radev et al., 2020) via the BayesFlow software for amortized Bayesian workflows (Radev et al., 2023b).
- We trained a neural likelihood estimator (NLE; Papamakarios et al., 2019) via the BayesFlow software for amortized Bayesian workflows (Radev et al., 2023b).
- We sampled from the approximate joint distribution $p(x, \theta)$ using jointly amortized neural approximation (JANA; Radev et al., 2023a), as implemented in the BayesFlow software for amortized Bayesian workflows (Radev et al., 2023b).

1. Radev, S. T., Schmitt, M., Schumacher, L., Elsemüller, L., Pratz, V., Schälte, Y., Köthe, U., & Bürkner, P.-C. (2023). BayesFlow: Amortized Bayesian Workflows With Neural Networks. *arXiv:2306.16015*. ([arXiv paper](https://arxiv.org/abs/2306.16015))
2. Radev, S. T., Mertens, U. K., Voss, A., Ardizzone, L., Köthe, U. (2020). BayesFlow: Learning Complex Stochastic Models With Invertible Neural Networks. IEEE Trans Neural Netw Learn Syst. 33(4). 1452-1466.
3. Radev, S. T., Schmitt, M., Pratz, V., Picchini, U., Köthe, U., & Bürkner, P.-C. (2023). JANA: Jointly Amortized Neural Approximation of Complex Bayesian Models. *39th conference on Uncertainty in Artificial Intelligence*. ([UAI Proceedings](https://openreview.net/forum?id=dS3wVICQrU0))

**BibTeX:**

```
@misc{radev2023bayesflow,
title = {BayesFlow: Amortized Bayesian Workflows With Neural Networks},
author = {Stefan T Radev and Marvin Schmitt and Lukas Schumacher and Lasse Elsem\"{u}ller and Valentin Pratz and Yannik Sch\"{a}lte and Ullrich K\"{o}the and Paul-Christian B\"{u}rkner},
year = {2023},
publisher= {arXiv},
url={https://arxiv.org/abs/2306.16015}
}

@article{radev2020bayesflow,
doi = {10.1109/TNNLS.2020.3042395},
year = {2020},
title = {{BayesFlow}: Learning Complex Stochastic Models With Invertible Neural Networks},
journal = {IEEE Transactions on Neural Networks and Learning Systems},
author = {Radev, Stefan T and Mertens, Ulf K and Voss, A and Ardizzone, L and K\"{o}the, U},
}

@inproceedings{radev2023jana,
title={{JANA}: Jointly Amortized Neural Approximation of Complex Bayesian Models},
author={Stefan T. Radev and Marvin Schmitt and Valentin Pratz and Umberto Picchini and Ullrich Koethe and Paul-Christian Buerkner},
booktitle={The 39th Conference on Uncertainty in Artificial Intelligence},
year={2023},
url={https://openreview.net/forum?id=dS3wVICQrU0}
}
```