分类:ScispaCy: Fast and Robust Models for Biomedical Natural Language Processing
Mark Neumann, Daniel King, Iz Beltagy, Waleed Ammar. ScispaCy: Fast and Robust Models for Biomedical Natural Language Processing. BioNLP@ACL 2019
Abstract
Despite recent advances in natural language processing, many statistical models for processing text perform extremely poorly under domain shift. Processing biomedical and clinical text is a critically important application area of natural language processing, for which there are few robust, practical, publicly available models. This paper describes scispaCy, a new Python library and models for practical biomedical/scientific text processing, which heavily leverages the spaCy library. We detail the performance of two packages of models released in scispaCy and demonstrate their robustness on several tasks and datasets. Models and code are available at https://allenai.github.io/scispacy/.
总结和评论
这篇文章对引用动机做了识别,也提供了一个用来训练引文动机识别模型的数据库。
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