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Adapting Pretrained Text-to-Text Models for Long Text Sequences
by
Toshniwal, Shubham
, Mehdad, Yashar
, Xiong, Wenhan
, Wen-tau Yih
, Gupta, Anchit
in
Context
/ Documents
/ Domains
/ Optimization
2022
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Adapting Pretrained Text-to-Text Models for Long Text Sequences
by
Toshniwal, Shubham
, Mehdad, Yashar
, Xiong, Wenhan
, Wen-tau Yih
, Gupta, Anchit
in
Context
/ Documents
/ Domains
/ Optimization
2022
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Adapting Pretrained Text-to-Text Models for Long Text Sequences
Paper
Adapting Pretrained Text-to-Text Models for Long Text Sequences
2022
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Overview
We present an empirical study of adapting an existing pretrained text-to-text model for long-sequence inputs. Through a comprehensive study along three axes of the pretraining pipeline -- model architecture, optimization objective, and pretraining corpus, we propose an effective recipe to build long-context models from existing short-context models. Specifically, we replace the full attention in transformers with pooling-augmented blockwise attention, and pretrain the model with a masked-span prediction task with spans of varying length. In terms of the pretraining corpus, we find that using randomly concatenated short-documents from a large open-domain corpus results in better performance than using existing long document corpora which are typically limited in their domain coverage. With these findings, we build a long-context model that achieves competitive performance on long-text QA tasks and establishes the new state of the art on five long-text summarization datasets, often outperforming previous methods with larger model sizes. Our code has been released at https://github.com/facebookresearch/bart_ls.
Publisher
Cornell University Library, arXiv.org
Subject
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