SUPR
Causal Representation Learning
Dnr:

NAISS 2023/22-887

Type:

NAISS Small Compute

Principal Investigator:

Ahmet Zahid Balcioglu

Affiliation:

Chalmers tekniska högskola

Start Date:

2023-09-28

End Date:

2024-10-01

Primary Classification:

10201: Computer Sciences

Webpage:

Allocation

Abstract

Causal representation learning is an emerging research area in machine learning. Dedicated to learning causal graphs from unstructured data. Usually this is done through either extracting high-level features through deep neural networks or other kinds of featurizers and learning causal graphical model based on the extracted features, or through an end-to-end network which involves extracting identifiable high-level features through some model such as ICA(independent component analysis) and using the learned representation in causal discovery directly. This project will be used for training and using deep learning models for causal representation learning and to replicate existing state of the art studies.