Skip to content

Latest commit

 

History

History
23 lines (18 loc) · 2.68 KB

README.md

File metadata and controls

23 lines (18 loc) · 2.68 KB

Breakfast Club

SLAC HXML Reading Group

The HEP cross-frontier machine learning group (HXML) is a collaborative research initiative at SLAC national accelerator laboratory, led by Michael Kagan, Kazu Terao and Phil Marshall. One of our activities is this reading group, the Breakfast Club.

We meet by video every two weeks (on Tuesdays, at 0900 PT, hence the group/repo name) to discuss a paper that we have all agreed to read: the goal is to learn new machine learning methods and approaches together, and build up a shared, annotated bibliography file, hxml.bib. Each paper has an assigned "lead" reader, who has agreed to lead the discussion of the paper. We plan to spend a few months on each topic, and then move onto a new one. You can see what we are currently reading in the tables below; suggestions for new papers, and new topics, are made in the issues.

The reading group meetings are only open to HXML group members, but our bibliography file is available for anyone to use under the creative commons CC0 license. Feel free to send us questions and comments via the issues!

Hierarchical Models

Winter 2020

Paper (link to relevant issue with slides and paper) Date Leader
Hierarchical Implicit Models and Likelihood-Free Variational Inference 1/28/2020 @swagnercarena
Variational Inference with Normalizing Flows 3/10/2020 @jiwoncpark
Automatic Posterior Transformation for Likelihood-free Inference 3/24/2020 @swagnercarena
On Contrastive Learning for Likelihood-free Inference 6/03/2020 @jiwoncpark
Empirical Bayes for Likelihood-free Inference (his own application) 6/24/2020 @MaximeVandegar
Normalizing Flows for Probabilistic Modeling and Inference 7/08/2020, 07/29/2020 @jiwoncpark, @joshualin24
Bayesian Deep Learning and a Probabilistic Perspective of Generalization 8/12/2020 @swagnercarena
A general method for debiasing a Monte Carlo estimator 9/09/2020 @MaximeVandegar
Importance Weighted Hierarchical Variational Inference 9/30/2020 @jiwoncpark