基于领域知识融合的生物医学问答情境嵌入与模型加权

Yuxuan Lu, Jingya Yan, Zhixuan Qi, Zhongzheng Ge, Yongping Du
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引用次数: 0

摘要

生物医学问答旨在从生物医学领域获得给定问题的答案。由于该模型对生物医学领域知识的要求较高,从有限的训练数据中学习领域知识的难度较大。提出了一种将开放域QA模型AoA Reader与生物医学领域数据预训练的BioBERT模型相结合的上下文嵌入方法。我们对大型生物医学语料库采用无监督预训练,对生物医学问答数据集采用监督微调。此外,我们采用基于mlp的模型加权层,自动利用两个模型的优势来提供正确的答案。使用从PubMed语料库构建的公共数据集biomrc来评估我们的方法。实验结果表明,我们的模型在很大程度上优于目前最先进的系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contextual embedding and model weighting by fusing domain knowledge on biomedical question answering
Biomedical Question Answering aims to obtain an answer to the given question from the biomedical domain. Due to its high requirement of biomedical domain knowledge, it is difficult for the model to learn domain knowledge from limited training data. We propose a contextual embedding method that combines open-domain QA model AoA Reader and BioBERT model pre-trained on biomedical domain data. We adopt unsupervised pre-training on large biomedical corpus and supervised fine-tuning on biomedical question answering dataset. Additionally, we adopt an MLP-based model weighting layer to automatically exploit the advantages of two models to provide the correct answer. The public dataset biomrc constructed from PubMed corpus is used to evaluate our method. Experimental results show that our model outperforms state-of-the-art system by a large margin.
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