多层次复合神经网络医学问题答案匹配

Dong Ye, Sheng Zhang, Hui Wang, Jiajun Cheng, Xin Zhang, Zhaoyun Ding, Pei Li
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引用次数: 8

摘要

近年来,在线医疗问答社区非常流行,患者可以在这里提问医疗问题。深度学习技术已广泛应用于医疗领域和大量的自然语言处理任务,使自动回答医疗问题成为可能。从问题和答案中提取高级语义信息是问题和答案匹配中的关键问题。本文提出了一种多层复合卷积神经网络框架来缓解问答匹配问题。该模型不只是将多个卷积神经网络堆叠在一起,而是从每一层提取信息,然后在框架的最后将特征连接起来。因此,该框架能够更好地捕获高级语义,并在cMedQA数据集上达到新的最先进性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-level Composite Neural Networks for Medical Question Answer Matching
The online medical question answering community where patients can ask medical questions becomes quite popular in recent years. Deep learning techniques have been widely used in medical care field and a large number of Natural Language Processing tasks, which makes it possible to answer the medical question automatically. The challenge in extracting high-level semantic information from the question and the answer is the key issue in question answer matching. This paper proposes a multi-level composite convolutional neural networks framework to alleviate the issue in question answer matching. The model does not just stack multiple convolutional neural networks together, but extracts information from each layer and then concatenates the features at the end of the framework. As a consequence, the framework is able to better capture high-level semantics and reach a new state-of-the-art performance on cMedQA dataset.
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