× This challenge is awaiting approval from an organizer.

Bayesian Inference in the Machine Learning Era

Bayesian statistics lie at the heart of inference for the vast majority of tasks in Astrophysics and Cosmology. Over the last 20 years, with the advancement of both computational resources and statistical tools, this field has experienced an abundance of new methods, varying in speed, accuracy and computational expense. These can be classified into more traditional methods and machine learning accelerated / enabled. (Examples for the former include nested sampling, Hamilton Monte Carlo or approximate bayesian computation, for the latter emulator accelerated inference or neural posterior estimation) As all these methods approach the problem of inference in a slightly different way, an exhaustive comparison of the performance of such methods in varying regimes (e.g. high dimensional data, computationally expensive models, unknown likelihoods, sparse data…) would be very interesting. I propose to run mock inference tasks with varying inference methods to identify advantages and disadvantages of the methods.

Event finished

Event started

Joined the team

26.04.2024 17:49 ~ aperez

First post View challenge

26.04.2024 09:33 ~ kailehman

Challenge

 
Contributed 6 months ago by kailehman for IMPRS-Astro Hackathon 2024
Be excellent to each other :)
The IMPRS-Astro Hackathon is a community event intended for networking and collaboration as well as learning. We value the participation of every member of the workshop and want all attendees to have an enjoyable and fulfilling experience. Accordingly, all attendees are expected to show respect and courtesy to other attendees throughout the workshop and to abide by following our Code of Conduct. Any issues can be brought to the confidential attention of the workshop organizers, and thank you for helping make this a welcoming, friendly event for all.

Creative Commons LicenceThe contents of this website, unless otherwise stated, are licensed under a Creative Commons Attribution 4.0 International License.