GSAP:基于GRU和自注意的双重医学NLP任务混合模型

Huey-Ing Liu, Meng-Wei Chen, Wei-Chun Kao, Yao-Wen Yeh, Cheng Yang
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引用次数: 1

摘要

本文提出了一种基于门控循环单元(GRU)和自注意的混合模型GSAP,用于双重医学相关的NLP任务。GSAP堆栈了三个著名的神经网络单元:GRU,自关注和卷积神经网络(CNN)的池化,以提高准确性。在GSAP中,首先采用GRU来理解句子。第二,自注意层帮助模型关注输入的关键点。最后,池化层简化了配置,提高了系统的精度。将该方法应用于两种不同的医学NLP任务:医学质量保证匹配和吸烟状态分类,并取得了显著的效果。在吸烟预测中,GSAP的准确率在80%左右。对于医疗QA匹配任务,GSAP将准确率提升到90%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GSAP: A Hybrid GRU and Self-Attention Based Model for Dual Medical NLP Tasks
This paper proposes a hybrid Gated Recurrent Unit (GRU) and Self-Attention based model, named GSAP, for dual medical related NLP tasks. GSAP stacks three famous neural network units: GRU, self-attention and pooling of Convolutional Neural Network (CNN) to improve the accuracy. In the GSAP, GRU is first adopted to comprehend sentences. Second, the Self-Attention layer helps the model to focus on key points of inputs. Finally, the pooling layer eases the outfitting and upgrades the system accuracy. The proposed GSAP is applied to two different medical NLP tasks: medical QA matching and smoking status classification and demonstrates outstanding results. In the smoking prediction, GSAP obtains an accuracy around 80%. Regarding to the medical QA matching task, GSAP upgrades the accuracy up to around 90%.
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