基于人工神经网络的药用植物知识图谱

Q4 Agricultural and Biological Sciences International Journal Bioautomation Pub Date : 2022-03-01 DOI:10.7546/ijba.2022.26.1.000871
Lei Miao
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引用次数: 0

摘要

药用植物知识图谱使普通人能够区分药用植物并了解其药理作用,在药用植物使用过程中为医务工作者提供帮助和指导,并支持传统药用植物属性的智能查询。本文创新性地将人工神经网络引入药用植物知识图谱,为药用植物的科学开发和合理利用提供了实用而有价值的参考。首先,设计了药用植物知识图谱的实体关系,给出了药用植物知识图谱中各类数据的定义、尺度和示例;其次,详细介绍了多源知识融合的思想,以及药用植物实体信息的获取与存储策略。然后,将基于注意力的双向门控递归网络与卷积神经网络相结合,从语义和文本的角度检测药用植物之间的遗传关系。最后,阐述了药用植物的语义检索算法,并实现了知识图谱的可视化。实验证明了该模型和语义检索算法的有效性和优越性。结果表明:批大小越小,植物实体的识别精度越高,识别效果越好。研究结果可为其他领域的知识制图提供参考。
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Knowledge Mapping of Medicinal Plants Based on Artificial Neural Network
Knowledge mapping of medicinal plants enable ordinary people to differentiate between medicinal plants and learn their pharmacological effects, provide assistances and instructions to medical workers during the use of medicinal plants, and support intelligent queries of the properties of traditional medicinal plants. This paper innovatively introduces artificial neural network to the knowledge mapping of medicinal plants, and provides a practical and valuable reference for scientific development and reasonable use of medicinal plants. Firstly, the entity relationships were designed for medical knowledge map, and the definitions, scales, and examples were given for each type of data in the proposed knowledge map of medicinal plants. Next, the authors detailed the ideas of multi-source knowledge fusion, and the acquisition and storage strategies for entity information of medicinal plants. Then, the attention-based bidirectional gated recurrent network was combined with convolutional neural network to detect the genetic relationships between medicinal plants from the angles of semantics and texts. Finally, this paper explains the semantic retrieval algorithm for medicinal plants, and visualizes the knowledge map. The proposed model and semantic retrieval algorithm were proved effective and superior through experiments. It is concluded that: The smaller the batch size, the higher the recognition accuracy of plant entities, and the better the recognition effect. The research findings provide a reference for knowledge mapping in other fields.
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来源期刊
International Journal Bioautomation
International Journal Bioautomation Agricultural and Biological Sciences-Food Science
CiteScore
1.10
自引率
0.00%
发文量
22
审稿时长
12 weeks
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