Jonathan Crabbé
Jonathan Crabbé
Home
Posts
Projects
Talks
Publications
Contact
CV
Light
Dark
Automatic
Feature Importance
Concept Activation Regions: A Generalized Framework For Concept-Based Explanations
We extend existing feature and example importance methods to unsupervised learning.
Jonathan Crabbé
,
Mihaela van der Schaar
PDF
Cite
Code
Project
Project
Video
Label-Free Explainability for Unsupervised Models
We extend existing feature and example importance methods to unsupervised learning.
Jonathan Crabbé
,
Mihaela van der Schaar
PDF
Cite
Code
Project
Project
Video
Explaining Latent Representations with a Corpus of Examples
We introduce SimplEx, a case-based reasoning explanation method that permits to decompose latent representations with a corpus of example.
Jonathan Crabbé
,
Zhaozhi Qian
,
Fergus Imrie
,
Mihaela van der Schaar
PDF
Cite
Code
Project
Video
Explaining Time Series Predictions with Dynamic Masks
We introduce Dynamask, a perturbation-based feature importance method to explain the predictions of time series models.
Jonathan Crabbé
,
Mihaela van der Schaar
PDF
Cite
Code
Project
Video
Cite
×