Learning Group Importance using the Differentiable Hypergeometric Distribution
Open access
Date
2023-03-01Type
- Conference Paper
ETH Bibliography
yes
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Abstract
Partitioning a set of elements into subsets of a priori unknown sizes is essential in many applications. These subset sizes are rarely explicitly learned - be it the cluster sizes in clustering applications or the number of shared versus independent generative latent factors in weakly-supervised learning. Probability distributions over correct combinations of subset sizes are non-differentiable due to hard constraints, which prohibit gradient-based optimization. In this work, we propose the differentiable hypergeometric distribution. The hypergeometric distribution models the probability of different group sizes based on their relative importance. We introduce reparameterizable gradients to learn the importance between groups and highlight the advantage of explicitly learning the size of subsets in two typical applications: weakly-supervised learning and clustering. In both applications, we outperform previous approaches, which rely on suboptimal heuristics to model the unknown size of groups. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000588775Publication status
publishedBook title
The Eleventh International Conference on Learning RepresentationsPublisher
OpenReviewEvent
Organisational unit
09670 - Vogt, Julia / Vogt, Julia
Related publications and datasets
Is cited by: https://doi.org/10.3929/ethz-b-000634822
Is identical to: https://doi.org/10.48550/arXiv.2203.01629
Notes
Conference lecture held on May 1, 2023More
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ETH Bibliography
yes
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