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. 2024 Feb 1;10(3):e25383. doi: 10.1016/j.heliyon.2024.e25383

Table 2.

A summary of selected KG construction approaches for curriculum design and planning.

Ref. KG Specific Purpose Construction Algorithm(s) Type of KB KG Resource(s) #Entites (e)/#Relations (r) Evaluation Criteria Limitation(s)
[62] Improve curriculum and assist students' learning and understanding. Water Disciplines Entity-Relationship Joint Extraction (WDERJE) framework Schema-based Water conservancy educational big data #e: NA
#r: 180,000
F0.5-score
  • •Limitations in handling evolving or dynamic knowledge.

[63] University curriculum design Manual Schema-based Data collected from French students through surveys #e: 5452
#r: 27
task-based evaluation
  • •Limited discussion on the construction algorithm.

  • •Poor evaluation techniques,

[64] integrating social media contents in formal courses Semantic linking techniques Hybrid formal course entities, social media materials #e: 230#r: N/A Case study
  • •The experiment is being conducted within a specific course in the IS domain, which could introduce biases.

  • •The study did not analyze professors' perspectives, which could provide valuable insights.

  • •Some of the social features developed in the tools are not being utilized fully.

  • •The potential for differences in concept labelling by different students in crowdsourced ontology concepts.

  • •Lack of analysis on the implications of dynamically constructed program goals and learning objectives.

[65] Design a structured representation of curriculum knowledge using multimodal KG. DeepKE and PaddleOCR Hybrid Course materials, teaching videos, and speech content N/A Case study
  • •The DeepKE model's generalization ability might be limited due to the relatively small labelled training data.

  • •The paper doesn't elaborate on the challenges of multimodal fusion,

  • •Lack of quantitative results or analyses of the framework's performance.

[61] Supporting STEAM learning theme design BERT and tensor decomposition Schema-free Encyclopedia, OpenKG, and national discipline curriculum standards N/A P, R, F1, MRR, and Hits@N
  • •Further research is needed to address the interpretability mechanism of KGs for STEAM interdisciplinary semantic learning.

[66] Curriculum system improvement for higher education Various algorithms are used to construct three KGs Schema-free syllabuses of courses and external data sources N/A Subjective criteria such as positive feedback from teachers and students through surveys.
  • •The effectiveness of the approach relies on the availability and accuracy of course syllabuses, teacher resumes, and related data.

  • •The approach might require customization for different educational contexts.

[67] Enhancing MIS course curriculum. Top-down ontology modeling that maps the ontology model into a KG. Schema-based Course material N/A Case study
  • •Limitations in its generalizability to other domains.

  • •Incomplete or inaccurate ontology definitions could lead to limitations in the KG's quality.

[68] Supporting blended learning Association mining Hybrid Textbooks, curriculum standards, etc. N/A Case study
  • •Lack of adequate description of mechanisms used in constructing and evaluating the KG.

[69] A visual representation of the curriculum including chapters, sections, and knowledge points. Vocabulary mining, entity recognition, and knowledge extraction. Schema-free High school information technology textbooks N/A Case Study
  • •Potential errors in knowledge extraction,

  • •No discussion on the algorithms used for constructing the graph.

[71] Optimizing the teaching of internet fraud cases. Ontology mapping and relational mapping Schema-based Internet fraud cases, their characteristics, victims, platforms, fraud processes, technologies, losses, and prevention methods. N/A Case study (improvement in students' understanding and awareness of internet fraud)
  • •Limitations related to the size of the fraud knowledge graph and the potential absence of certain individual cases.

  • •The KGCT model is under development, thus ongoing refinement and improvement are needed.

[72] Education technology and learning analytics ontology-based learner modeling techniques Schema-based Programming records from an online programming platform N/A quasi-experiment, standardized tests, and experimental group
  • •The study's findings are based on a relatively small sample size of 38 participants,

  • •Lack of technical details of how these graphs are utilized or how the,

  • •The study does not explore the potential impact of KGs on group students or facilitate peer assistance.