James Allingham
@jamesallingham.bsky.social
1.1K followers 170 following 8 posts
Research Scientist @GoogleDeepMind | Organiser @DeepIndaba | Machine Learning PhD @CambridgeMLG | 🇿🇦
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Reposted by James Allingham
timrudner.bsky.social
Submit your work to the 7th Symposium on Advances in Approximate Bayesian Inference! #AABI

This year, #AABI will be co-located with #ICLR2025!

Workshop Track: February 7, AoE
Proceedings Track: February 7, AoE
Fast Track: February 18 / March 14, AoE

approximateinference.org/call/
Call for Papers
approximateinference.org
jamesallingham.bsky.social
Thanks 🤩 Obsessing over TikZ is my guilt-free procrastination method 😂
jamesallingham.bsky.social
A big shoutout to all of my amazing collaborators who made this paper happen! @brunokm.bsky.social Shreyas Padhy, Javier Antoran, David Krueger, Richard Turner, Eric Nalisnick, and Jose Miguel Hernandez-Lobato.
jamesallingham.bsky.social
I'll keep this thread short, but if you are interested to chat further please get in touch or visit the poster at NeurIPS on Fri 13 Dec at 4:30 p.m. PST (East Exhibit Hall A-C #3710)

Here are a few diagrams more diagrams from the paper to tempt you!
jamesallingham.bsky.social
Excitingly, we can also use the symmetry information learned by our SGM to improve the data efficiency of standard deep generative models (e.g., VAEs).
jamesallingham.bsky.social
Our SGM is also interpretable – we can inspect the distributions over transformations for any prototype, which tells us about our dataset, and if our SGM is learning reasonable things.

E.g., 9's and 6's can be rotated into each other, and 1's can be rotated 180 deg w/o change.
jamesallingham.bsky.social
We provide experimental evidence that our SGM can learn prototypes and the distributions over transformation parameters such that the true data distribution is recovered. Here we show observations from the test set (top), prototypes (mid), and resampled observations (bot).
jamesallingham.bsky.social
We introduce our symmetry-aware generative model (SGM), in which an observation is generated by transforming an invariant latent "prototype", and a simple algorithm for learning the protos and transformation params.

paper: arxiv.org/abs/2403.01946
code: github.com/cambridge-ml...
jamesallingham.bsky.social
I'll be at NeurIPS next week, presenting our work "A Generative Model of Symmetry Transformations." In it, we propose a symmetry-aware generative model that discovers which (approximate) symmetries are present in a dataset and can be leveraged to improve data efficiency.

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