Abstract
A few-shot generative model should be able to generate data from a novel
distribution by only observing a limited set of examples. In few-shot learning
the model is trained on data from many sets from distributions sharing some
underlying properties such as sets of characters from different alphabets or
objects from different categories. We extend current latent variable models for
sets to a fully hierarchical approach with an attention-based point to
set-level aggregation and call our method SCHA-VAE for
Set-Context-Hierarchical-Aggregation Variational Autoencoder. We explore
likelihood-based model comparison, iterative data sampling, and adaptation-free
out-of-distribution generalization. Our results show that the hierarchical
formulation better captures the intrinsic variability within the sets in the
small data regime. This work generalizes deep latent variable approaches to
few-shot learning, taking a step toward large-scale few-shot generation with a
formulation that readily works with current state-of-the-art deep generative
models.
Original language | English |
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Title of host publication | Proceedings of the 39th International Conference on Machine Learning |
Number of pages | 20 |
Publication date | 2022 |
Publication status | Published - 2022 |
Event | 39th International Conference on Machine Learning - Baltimore Convention Center, Baltimore , United States Duration: 17 Jul 2022 → 23 Jul 2022 Conference number: 39 |
Conference
Conference | 39th International Conference on Machine Learning |
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Number | 39 |
Location | Baltimore Convention Center |
Country/Territory | United States |
City | Baltimore |
Period | 17/07/2022 → 23/07/2022 |
Series | Proceedings of Machine Learning Research |
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Volume | 162 |
ISSN | 2640-3498 |