We present a PaperRobot who performs as an automatic research assistant by (1) conducting deep understanding of a large collection of human-written papers in a target domain and constructing comprehensive background knowledge graphs (KGs); (2) creating new ideas by predicting links from the background KGs, by combining graph attention and contextual text attention; (3) incrementally writing some key elements of a new paper based on memory-attention networks: from the input title along with predicted related entities to generate a paper abstract, from the abstract to generate conclusion and future work, and finally from future work to generate a title for a follow-on paper. Turing Tests, where a biomedical domain expert is asked to compare a system output and a human-authored string, show PaperRobot generated abstracts, conclusion and future work sections, and new titles are chosen over human-written ones up to 30%, 24% and 12% of the time, respectively.
PaperRobot: Incremental Draft Generation of Scientific Ideas
PaperRobot generates key sections of academic papers through graph attention and memory-attention networks, performing favorably in Turing tests against human-written content.
- Year
- 2019
- Venue
- paperrobot-incremental-draft-generation-of-1
- Authors
- 7
- Hosting
- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/1905.07870v4ARXIV-DEFAULT
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- Semantic Scholar