This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
ApartSprints
Women in AI Safety Hackathon
679781551b57b97e23660edd
Women in AI Safety Hackathon
March 10, 2025
Accepted at the 
679781551b57b97e23660edd
 research sprint on 

Mechanistic Interpretability Track: Neuronal Pathway Coverage

Our study explores mechanistic interpretability by analyzing how Llama 3.3 70B classifies political content. We first infer user political alignment (Biden, Trump, or Neutral) based on tweets, descriptions, and locations. Then, we extract the most activated features from Biden- and Trump-aligned datasets, ranking them based on stability and relevance. Using these features, we reclassify users by prompting the model to rely only on them. Finally, we compare the new classifications with the initial ones, assessing neural pathway overlap and classification consistency through accuracy metrics and visualization of activation patterns.

By 
Garance Colomer, Luc Chan, Sacha Lahlou, Leina Corporan Miath
🏆 
4th place
3rd place
2nd place
1st place
 by peer review
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.

This project is private