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SetVAE: Learning Hierarchical Composition for Generative Modeling of Set-Structured Data

Jin-Woo Kim, Jaehoon Yoo, Juho Lee, Seunghoon Hong

202150 citationsDOI

Abstract

Generative modeling of set-structured data, such as point clouds, requires reasoning over local and global structures at various scales. However, adopting multi-scale frameworks for ordinary sequential data to a set-structured data is nontrivial as it should be invariant to the permutation of its elements. In this paper, we propose SetVAE, a hierarchical variational autoencoder for sets. Motivated by recent progress in set encoding, we build SetVAE upon attentive modules that first partition the set and project the partition back to the original cardinality. Exploiting this module, our hierarchical VAE learns latent variables at multiple scales, capturing coarse-to-fine dependency of the set elements while achieving permutation invariance. We evaluate our model on point cloud generation task and achieve competitive performance to the prior arts with substantially smaller model capacity. We qualitatively demonstrate that our model generalizes to unseen set sizes and learns interesting subset relations without supervision. Our implementation is available at https://github.com/jw9730/setvae.

Topics & Concepts

Computer scienceAutoencoderSet (abstract data type)Theoretical computer scienceGenerative modelCardinality (data modeling)Partition (number theory)Invariant (physics)Permutation (music)Artificial intelligenceGenerative grammarData miningDeep learningMathematicsCombinatoricsPhysicsAcousticsProgramming languageMathematical physicsGenerative Adversarial Networks and Image Synthesis3D Shape Modeling and AnalysisDomain Adaptation and Few-Shot Learning