Abstract
Multimodal variational autoencoders (VAEs) have shown promise as efficient generative models for weakly-supervised data. Yet, despite their advantage of weak supervision, they exhibit a gap in generative quality compared to unimodal VAEs, which are completely unsupervised. In an attempt to explain this gap, we uncover a fundamental limitation that applies to a large family of mixture-based multimodal VAEs. We prove that the sub-sampling of modalities enforces an undesirable upper bound on the multimodal ELBO and thereby limits the generative quality of the respective models. Empirically, we showcase the generative quality gap on both synthetic and real data and present the tradeoffs between different variants of multimodal VAEs. We find that none of the existing approaches fulfills all desired criteria of an effective multimodal generative model when applied on more complex datasets than those used in previous benchmarks. In summary, we identify, formalize, and validate fundamental limitations of VAE-based approaches for modeling weakly-supervised data and discuss implications for real-world applications. Show more
Publication status
publishedExternal links
Book title
The Tenth International Conference on Learning Representations (ICLR 2022)Publisher
OpenReviewEvent
Organisational unit
09670 - Vogt, Julia / Vogt, Julia
Funding
188466 - Machine Learning Methods for Clinical Data Analysis and Precision Medicine (SNF)
Related publications and datasets
Is cited by: https://doi.org/10.3929/ethz-b-000634822
Notes
Poster presented on April 27, 2022.More
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ETH Bibliography
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