模态框(Modal)标题

在这里添加一些文本

模态框(Modal)标题

  • Home
  • Editorial Board
  • Guide to Authors
    • Call for Papers
    • Submission Guidelines
    • Formatting Guide
    • Print on Demand
  • Policy
    • OA Policy
    • AI Policy
    • Publication Ethics Statement
    • Preprint Policy
    • Data Sharing Policy
    • Author Signature Regulations
  • Archive
  • LIS
  • About
    • About Us
    • Development History
    • Contact us
  • 中文

Figure/Table detail

Construction of Intelligent Q&A System for Medicinal Plant Based on Multimodal Knowledge Graph
Doudou Zhao, Yujun Wang, Rui Liu, Chang Liu
Knowledge Management Forum, 2024, 9(5): 487-504.   DOI: 10.13266/j.issn.2095-5472.2024.036

Figure 13 Examples of pictures provided by subjects
Other figure/table from this article
  • Figure 1 System architecture diagram
  • Figure 2 Multi-modal medicinal plant pattern layer
  • Table 1 Data source
  • Table 2 Entity categories and quantities
  • Table 3 Relationship categories and quantities
  • Table 4 User question simulation data set
  • Table 5 Problem category classification effect
  • Table 6 Cypher s tatement query template
  • Table 7 Partial answer template
  • Figure 3 Training set accuracy curve
  • Figure 4 Validation set accuracy curve
  • Figure 5 Accuracy curves of different model training sets
  • Figure 6 Accuracy curves of different model validation sets
  • Table 8 Model accuracy comparison
  • Figure 7 Comparison of verification accuracy of two data sets
  • Figure 8 EfficientNet-B0-B4 training set accuracy curve
  • Figure 9 EfficientNet-B0-B4 validation set accuracy curve
  • Table 9 Efficiency comparison of EfficientNet series models
  • Table 10 Training accuracy and verification accuracy of EfficientNet-B3 model
  • Figure 10 System interface display
  • Figure 11 Example of medicinal plant text query
  • Figure 12 Example of medicinal plant image query
  • Table 11 Examples of questions provided by subjects

京ICP备11021825号-2
Copyright © Knowledge Management Forum, All Rights Reserved.
Tel: 010-82623933 
E-mail: kmf@mail.las.ac.cn
Powered by Beijing Magtech Co. Ltd
Total visitors:   Visitors of today:   Now online: