Empirische Inferenz Members Publications

Probabilistic Algorithms

Wsabi
From [File Icon]. Adaptive Bayesian quadrature can find highly informative evaluation nodes for integrands (left) that exhibit more structure than random (Monte Carlo) evaluations. In contrast to Monte Carlo, it can be adapted to application-specific computational considerations (such as the fact that additional evaluations are "free" along radii, right), to achieve additional gains.

Members

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Probabilistic Numerics, Empirische Inferenz
Affiliated Researcher
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Empirische Inferenz
  • Doctoral Researcher
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Empirische Inferenz
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Empirische Inferenz
Senior Research Scientist
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Empirische Inferenz
  • Doctoral Researcher

Publications

Empirical Inference Conference Paper Laplace Redux — Effortless Bayesian Deep Learning Daxberger*, E., Kristiadi*, A., Immer*, A., Eschenhagen*, R., Bauer, M., Hennig, P. Advances in Neural Information Processing Systems 34 (NeurIPS 2021), 20089-20103, (Editors: M. Ranzato and A. Beygelzimer and Y. Dauphin and P.S. Liang and J. Wortman Vaughan), Curran Associates, Inc., 35th Annual Conference on Neural Information Processing Systems, December 2021, *equal contribution (Published) URL BibTeX

Empirical Inference Article Real-time gravitational wave science with neural posterior estimation Dax, M., Green, S. R., Gair, J., Macke, J. H., Buonanno, A., Schölkopf, B. Physical Review Letters, 127(24), December 2021 (Published) arXiv DOI URL BibTeX

Empirical Inference Article Deep learning enables fast and dense single-molecule localization with high accuracy Speiser*, A., Müller*, L., Hoess, P., Matti, U., Obara, C. J., Legant, W. R., Kreshuk, A., Macke, J. H., Ries, J., Turaga, S. C. Nature Methods, 18:1082-1090, Nature Publishing Group, New York, NY, September 2021, *equal contribution (Published) bioRxiv DOI URL BibTeX

Empirical Inference Conference Paper Bayesian Quadrature on Riemannian Data Manifolds Fröhlich, C., Gessner, A., Hennig, P., Schölkopf, B., Arvanitidis, G. Proceedings of 38th International Conference on Machine Learning (ICML), 139:3459-3468, Proceedings of Machine Learning Research, (Editors: Meila, Marina and Zhang, Tong), PMLR, July 2021 (Published) URL BibTeX