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SciXGen: A Scientific Paper Dataset for Context-Aware Text Generation

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arxiv 2110.10774 v1 pith:2367R2ZI submitted 2021-10-20 cs.CL

SciXGen: A Scientific Paper Dataset for Context-Aware Text Generation

classification cs.CL
keywords scientifictextdatasetgenerationtextbfscixgencontextcontext-aware
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Generating texts in scientific papers requires not only capturing the content contained within the given input but also frequently acquiring the external information called \textit{context}. We push forward the scientific text generation by proposing a new task, namely \textbf{context-aware text generation} in the scientific domain, aiming at exploiting the contributions of context in generated texts. To this end, we present a novel challenging large-scale \textbf{Sci}entific Paper Dataset for Conte\textbf{X}t-Aware Text \textbf{Gen}eration (SciXGen), consisting of well-annotated 205,304 papers with full references to widely-used objects (e.g., tables, figures, algorithms) in a paper. We comprehensively benchmark, using state-of-the-arts, the efficacy of our newly constructed SciXGen dataset in generating description and paragraph. Our dataset and benchmarks will be made publicly available to hopefully facilitate the scientific text generation research.

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