Litcius/Paper detail

HIBRIDS: Attention with Hierarchical Biases for Structure-aware Long Document Summarization

Shuyang Cao, Lu Wang

2022Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)35 citationsDOIOpen Access PDF

Abstract

Document structure is critical for efficient information consumption. However, it is challenging to encode it efficiently into the modern Transformer architecture. In this work, we present HIBRIDS, which injects Hierarchical Biases foR Incorporating Document Structure into the calculation of attention scores. We further present a new task, hierarchical questionsummary generation, for summarizing salient content in the source document into a hierarchy of questions and summaries, where each follow-up question inquires about the content of its parent question-summary pair. We also annotate a new dataset with 6, 153 questionsummary hierarchies labeled on long government reports. Experiment results show that our model produces better question-summary hierarchies than comparisons on both hierarchy quality and content coverage, a finding also echoed by human judges. Additionally, our model improves the generation of longform summaries from lengthy government reports and Wikipedia articles, as measured by ROUGE scores.

Topics & Concepts

Automatic summarizationHierarchyComputer scienceTransformerText generationSalientInformation retrievalENCODETask (project management)Natural language processingArtificial intelligencePolitical sciencePhysicsQuantum mechanicsLawBiochemistryGeneEconomicsManagementVoltageChemistryTopic ModelingAdvanced Text Analysis TechniquesText and Document Classification Technologies