基于 BSG 深度学习模型的中药智能问题解答系统:以处方和本草为例

Q3 Medicine
Ran Li , Gao Ren , Junfeng Yan , Beiji Zou , Qingping Liu
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引用次数: 0

摘要

方法应用《本草纲目》和《中华本草》构建综合知识图谱,作为智能答疑系统的基础。研究中,应用了BERT+Slot-Gated(BSG)深度学习模型来识别用户提问中提出的中医实体和问题意图。然后,根据识别出的实体和意图从知识图谱中检索出的答案将返回给用户。结果绘制出了包含 3 149 个实体和 6 891 个关系三元组的中医知识图谱。在问题语料库辅助的问题解答测试中,回答 20 种中医问题时,识别实体的 F1 值为 0.996 9,识别意图的准确率为 99.75%。这表明该系统既可行又实用。用户可以通过微信官方账号平台与系统进行交互。结论本文提出的 BSG 模型通过增加向量维度,在实验中取得了良好的效果,表明了联合模型方法的有效性,为中医智能答题系统的实现提供了新的研究思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent question answering system for traditional Chinese medicine based on BSG deep learning model: taking prescription and Chinese materia medica as examples

Objective

To construct a traditional Chinese medicine (TCM) knowledge base using knowledge graph based on deep learning methods, and to explore the application of joint models in intelligent question answering systems for TCM.

Methods

Textbooks Prescriptions of Chinese Materia Medica and Chinese Materia Medica were applied to construct a comprehensive knowledge graph serving as the foundation for the intelligent question answering system. In the study, a BERT+Slot-Gated (BSG) deep learning model was applied for the identification of TCM entities and question intentions presented by users in their questions. Answers retrieved from the knowledge graph based on the identified entities and intentions were then returned to the user. The Flask framework and BSG model were utilized to develop the intelligent question answering system of TCM.

Results

A TCM knowledge map encompassing 3 149 entities and 6 891 relational triples based on the prescriptions and Chinese materia medica was drawn. In the question answering test assisted by a question corpus, the F1 value for recognizing entities when answering 20 types of TCM questions was 0.996 9, and the accuracy rate for identifying intentions was 99.75%. This indicates that the system is both feasible and practical. Users can interact with the system through the WeChat Official Account platform.

Conclusion

The BSG model proposed in this paper achieved good results in experiments by increasing the vector dimension, indicating the effectiveness of the joint model method and providing new research ideas for the implementation of intelligent question answering systems in TCM.

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来源期刊
Digital Chinese Medicine
Digital Chinese Medicine Medicine-Complementary and Alternative Medicine
CiteScore
1.80
自引率
0.00%
发文量
126
审稿时长
63 days
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