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Rot-Pro: ModelingTransitivitybyProjectionin KnowledgeGraphEmbedding

Neural Information Processing Systems

Inthispaper,we first theoretically showthat the transitive relations can be modeled with projections. Wethen propose the Rot-Pro model which combines the projection and relational rotation together. We prove that Rot-Pro can infer all the aboverelation patterns.





TrashorTreasure?AnInteractiveDual-Stream StrategyforSingleImageReflectionSeparation

Neural Information Processing Systems

Existing deep learning based solutions typically restore the target layers individually, or with some concerns at the end of the output, barely taking into account the interaction across thetwostreams/branches. Inorder toutilize information more efficiently, this work presents a general yet simple interactive strategy, namely your trash is my treasure(YTMT), for constructing dual-stream decomposition networks.



ϵ-Softmax: Approximating One-Hot Vectors for Mitigating Label Noise Jialiang Wang 1 Xiong Zhou 1 Deming Zhai

Neural Information Processing Systems

Noisy labels pose a common challenge for training accurate deep neural networks. To mitigate label noise, prior studies have proposed various robust loss functions to achieve noise tolerance in the presence of label noise, particularly symmetric losses.