资源论文Sequence Modeling with Unconstrained Generation Order

Sequence Modeling with Unconstrained Generation Order

2020-02-21 | |  62 |   39 |   0

Abstract

The dominant approach to sequence generation is to produce a sequence in some predefined order, e.g. left to right. In contrast, we propose a more general model that can generate the output sequence by inserting tokens in any arbitrary order. Our model learns decoding order as a result of its training procedure. Our experiments show that this model is superior to fixed order models on a number of sequence generation tasks, such as Machine Translation, Image-to-LaTeX and Image Captioning.1

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