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Adapting Pretrained Text-to-Text Models for Long Text Sequences

Wenhan Xiong, Anchit Gupta, Shubham Toshniwal, Yashar Mehdad, Scott Yih

202316 citationsDOIOpen Access PDF

Abstract

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 lengths. 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.

Topics & Concepts

Computer scienceAutomatic summarizationArtificial intelligenceNatural language processingPipeline (software)TransformerPoolingContext (archaeology)Language modelText generationContext modelSpeech recognitionTask (project management)Information retrievalManagementProgramming languageBiologyPaleontologyQuantum mechanicsVoltageEconomicsObject (grammar)PhysicsTopic ModelingNatural Language Processing TechniquesAdvanced Text Analysis Techniques
Adapting Pretrained Text-to-Text Models for Long Text Sequences | Litcius