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ICLR 2023 Workshop: What do we need for successful domain generalization?


Website: https://domaingen.github.io/


The real challenge for any machine learning system is to be reliable and robust 
in any situation, even if it is different compared to training conditions. 
Existing general purpose approaches to domain generalization (DG) — a problem 
setting that challenges a model to generalize well to data outside the 
distribution sampled at training time — have failed to consistently outperform 
standard empirical risk minimization baselines. In this workshop, we aim to 
work towards answering a single question: what do we need for successful domain 
generalization? We conjecture that additional information of some form is 
required for a general purpose learning methods to be successful in the DG 
setting. The purpose of this workshop is to identify possible sources of such 
information, and demonstrate how these extra sources of data can be leveraged 
to construct models that are robust to distribution shift. Specific topics of 
interest include, but are not limited to:


* Leveraging domain-level meta-data
* Exploiting multiple modalities to achieve robustness to distribution shift
* Frameworks for specifying known invariances/domain knowledge
* Causal modeling and how it can be robust to distribution shift
* Empirical analysis of existing domain generalization methods and their 
underlying assumptions
* Theoretical investigations into the domain generalization problem and 
potential solutions

Submissions are accepted via OpenReview: 
https://openreview.net/group?id=ICLR.cc/2023/Workshop/DG

Submission deadline: February 3, 2023
Author notifications: March 3, 2023
Meeting: May 5, 2023
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