A Self-Paced Mixed Distillation Method for Non-Autoregressive Generation
Non-Autoregressive generation is a sequence generation paradigm, which removes the dependency between target tokens. It could efficiently reduce the text generation latency with parallel decoding in place of token-by-token sequential decoding. However, due to the known multi-modality problem, Non-Au...
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Zusammenfassung: | Non-Autoregressive generation is a sequence generation paradigm, which
removes the dependency between target tokens. It could efficiently reduce the
text generation latency with parallel decoding in place of token-by-token
sequential decoding. However, due to the known multi-modality problem,
Non-Autoregressive (NAR) models significantly under-perform Auto-regressive
(AR) models on various language generation tasks. Among the NAR models, BANG is
the first large-scale pre-training model on English un-labeled raw text corpus.
It considers different generation paradigms as its pre-training tasks including
Auto-regressive (AR), Non-Autoregressive (NAR), and semi-Non-Autoregressive
(semi-NAR) information flow with multi-stream strategy. It achieves
state-of-the-art performance without any distillation techniques. However, AR
distillation has been shown to be a very effective solution for improving NAR
performance. In this paper, we propose a novel self-paced mixed distillation
method to further improve the generation quality of BANG. Firstly, we propose
the mixed distillation strategy based on the AR stream knowledge. Secondly, we
encourage the model to focus on the samples with the same modality by
self-paced learning. The proposed self-paced mixed distillation algorithm
improves the generation quality and has no influence on the inference latency.
We carry out extensive experiments on summarization and question generation
tasks to validate the effectiveness. To further illustrate the commercial value
of our approach, we conduct experiments on three generation tasks in real-world
advertisements applications. Experimental results on commercial data show the
effectiveness of the proposed model. Compared with BANG, it achieves
significant BLEU score improvement. On the other hand, compared with
auto-regressive generation method, it achieves more than 7x speedup. |
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DOI: | 10.48550/arxiv.2205.11162 |