Jonathan Crabbé
Jonathan Crabbé
Home
Posts
Projects
Talks
Publications
Contact
CV
Light
Dark
Automatic
Machine learning
Representation Learning
Learning realistic representations of the world.
Robust Machine Learning
Making sure that machines are doing what they are supposed to do.
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
Learning outside the black-box: the pursuit of interpretable models
We introduce Symbolic Pursuit, a new method for symbolic regression based on Meijer G-functions and the projection pursuit algorithm.
Jonathan Crabbé
,
Yao Zhang
,
William R. Zame
,
Mihaela van der Schaar
PDF
Cite
Code
Project
Video
Interpretable Machine Learning
Creating an interface between machine learning models and human beings.
Cite
×