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Return of Unconditional Generation: A Self-supervised Representation Generation Method

Neural Information Processing Systems

Unconditional generation--the problem of modeling data distribution without relying on human-annotated labels--is a long-standing and fundamental challenge in generative models, creating a potential of learning from large-scale unlabeled data. In the literature, the generation quality of an unconditional method has been much worse than that of its conditional counterpart. This gap can be attributed to the lack of semantic information provided by labels. In this work, we show that one can close this gap by generating semantic representations in the representation space produced by a self-supervised encoder. These representations can be used to condition the image generator.



Neural Pfaffians: Solving Many Many-Electron Schrรถdinger Equations

Neural Information Processing Systems

Recent works proposed amortizing the cost by learning generalized wave functions across different structures and compounds instead of solving each problem independently.





Assembly Fuzzy Representation on Hypergraph for Open-Set 3D Object Retrieval Y ang Xu

Neural Information Processing Systems

The lack of object-level labels presents a significant challenge for 3D object retrieval in the open-set environment. However, part-level shapes of objects often share commonalities across categories but remain underexploited in existing retrieval methods. In this paper, we introduce the Hypergraph-Based Assembly Fuzzy Representation (HAFR) framework, which navigates the intricacies of open-set 3D object retrieval through a bottom-up lens of Part Assembly .