Abstract
People easily recognize new visual categories that are new combinations of known components. This compositional generalization capacity is critical for learning in real-world domains like vision and language because the long tail of new combinations dominates the distribution. Unfortunately, learning systems struggle with compositional generalization because they often build on features that are correlated with class labels even if they are not “essential” for the class. This leads to consistent misclassification of samples from a new distribution, like new combinations of known components. Here we describe an approach for compositional generalization that builds on causal ideas. First, we describe compositional zero-shot learning from a causal perspective, and propose to view zero-shot inference as finding “which intervention caused the image?”. Second, we present a causal-inspired embedding model that learns disentangled representations of elementary components of visual objects from correlated (confounded) training data. We evaluate this approach on two datasets for predicting new combinations of attribute-object pairs: A well-controlled synthesized images dataset and a real-world dataset which consists of fine-grained types of shoes. We show improvements compared to strong baselines. Code and data are provided in https://github.com/nv-research-israel/causal_comp.
| Original language | English |
|---|---|
| Journal | Advances in Neural Information Processing Systems |
| Volume | 2020-December |
| State | Published - 2020 |
| Event | 34th Conference on Neural Information Processing Systems, NeurIPS 2020 - Virtual, Online Duration: 6 Dec 2020 → 12 Dec 2020 |
Bibliographical note
Publisher Copyright:© 2020 Neural information processing systems foundation. All rights reserved.
Funding
We thank Daniel Greenfeld, Idan Schwartz, Eli Meirom, Haggai Maron, Lior Bracha and Ohad Amosy for their helpful feedback on the early version. Uri Shalit was partially supported by the Israel Science Foundation (grant No. 1950/19). Uri Shalit was partially supported by the Israel Science Foundation. Yuval Atzmon was supported by the Israel Science Foundation and Bar-Ilan University during his Ph.D. studies.
| Funders | Funder number |
|---|---|
| Bar-Ilan University | |
| Israel Science Foundation | 1950/19 |