Raising the Compatibility of Heterogeneous Annotations: A Case Study on

Yue Wang, Kazuhiro Yoshida, Jin-Dong Kim, Rune Saetre, Junichi Tsujii
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Abstract

While there are several corpora which claim to have annotations for protein references, the heterogeneity between the annotations is recognized as an obstacle to develop expensive resources in a synergistic way. Here we present a series of experimental results which show the differences of protein mention annotations made to two corpora, GENIA and AImed.
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提高异构注释的兼容性:以
虽然有几个语料库声称具有蛋白质参考的注释,但注释之间的异质性被认为是以协同方式开发昂贵资源的障碍。在此,我们提出了一系列实验结果,显示了对GENIA和aim两种语料库的蛋白质提及注释的差异。
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