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Bi-directional Capsule Network Model for Chinese Biomedical Community Question Answering

机译:中国生物医学界问答的双向胶囊网络模型

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With the rapid development of the Internet, community question answering (CQA) platforms have attracted increasing attention over recent years, particularly in the biomedical field. On biomedical CQA platforms, patients share information about diseases, drugs and symptoms by communicating with each other. Therefore, the biomedical CQA platforms become particularly valuable resources for information and knowledge acquisition of patients. To accurately acquire relevant information, question answering techniques have been introduced in biomedical CQA. However, existing approaches cannot achieve the ideal performance due to the domain-specific characteristics. For example, biomedical CQA involves more complex interactive information between askers and answerers, while CQA techniques designed for the general field can only deal with single interactions between questions and candidate answers within a similar topic. To address the problem, we propose a novel neural network model for biomedical CQA. Our model adopts the bidirectional capsule network to focus on different aspects of biomedical questions and candidate answers, and merges high-level vector representations of questions and answers to capture abundant semantic information. Furthermore, to capture the meaning of Chinese characters, we incorporate the radical of Chinese characters embedding as auxiliary information to improve the performance of Chinese biomedical CQA. We conduct extensive experiments, and demonstrate that our model achieves significant improvement on the performance of answer selection in the Chinese biomedical CQA task.
机译:随着Internet的快速发展,社区问答平台(CQA)近年来引起了越来越多的关注,特别是在生物医学领域。在生物医学CQA平台上,患者可以通过相互交流来共享有关疾病,药物和症状的信息。因此,生物医学CQA平台成为患者信息和知识获取的特别有价值的资源。为了准确获取相关信息,在生物医学CQA中引入了问答技术。但是,由于领域特定的特性,现有方法无法实现理想的性能。例如,生物医学CQA涉及询问者和答题者之间更复杂的交互信息,而为一般领域设计的CQA技术只能处理相似主题内问题和候选答案之间的单个交互。为了解决该问题,我们提出了一种用于生物医学CQA的新型神经网络模型。我们的模型采用双向胶囊网络来关注生物医学问题和候选答案的不同方面,并合并问题和答案的高级矢量表示,以捕获大量的语义信息。此外,为了捕捉汉字的含义,我们结合了汉字嵌入的部首作为辅助信息,以提高汉字生物医学CQA的性能。我们进行了广泛的实验,并证明了我们的模型在中国生物医学CQA任务中的答案选择性能上取得了显着改善。

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