We present PeerSum, a novel dataset for generating meta-reviews of scientific papers. The meta-reviews can be interpreted as abstractive summaries of reviews, multi-turn discussions and the paper abstract. These source documents have rich inter-document relationships with an explicit hierarchical conversational structure, cross-references and (occasionally) conflicting information. To introduce the structural inductive bias into pre-trained language models, we introduce Rammer ( Relationship-aware Multi-task Meta-review Generator), a model that uses sparse attention based on the conversational structure and a multi-task training objective that predicts metadata features (e.g., review ratings). Our experimental results show that Rammer outperforms other strong baseline models in terms of a suite of automatic evaluation metrics. Further analyses, however, reveal that RAMMER and other models struggle to handle conflicts in source documents of PeerSum, suggesting meta-review generation is a challenging task and a promising avenue for further research.
Summarizing Multiple Documents with Conversational Structure for Meta-Review Generation
PeerSum dataset provides genuine summaries of scientific paper reviews with hierarchical inter-document relationships, and Rammer model enhances meta-review generation using sparse attention and multi-task learning.
- Year
- 2023
- Venue
- arXiv 2023
- Authors
- 3
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- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/2305.01498v4ARXIV-DEFAULT
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