A Survey of Knowledge Graph Approaches and Applications in Education
Abstract
:1. Introduction
- What are the patterns of publications on knowledge graphs in education?
- What are the educational contexts of knowledge graph applications?
- What are the objectives, application categories, data sources, technical means, and pedagogical issues for knowledge graph approaches and applications in education?
2. Related Work
3. Methodology
3.1. Data Collection
3.2. Data Analysis
4. Results
4.1. Overview of the Publications
4.1.1. Year of Publication
4.1.2. Country/Region of Authors’ Affiliations
4.1.3. Research Methods
4.2. Contexts of Knowledge Graph Approaches
4.2.1. Level of Education
4.2.2. Subject Disciplines
4.3. Implementation of Knowledge Graph Approaches
4.3.1. Types of Objectives
4.3.2. Types of Application Categories
4.3.3. Types of Knowledge Graph Resources
4.3.4. Types of Technical Means
4.3.5. Types of Pedagogies
5. Discussion
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Ref. | Objectives | Application Categories | Knowledge Graph Resources | Technical Means | Pedagogies | Limitations |
---|---|---|---|---|---|---|
[8] | Enhance personalised educational content recommendation. | Educational recommendation | Learning resources, learner attributes, and preferences | Cosine similarity | Personalised learning |
|
[10] | Facilitate question generation for instructors. | Question generation | Textbooks | Semantic networks | N/A |
|
[15] | Find a meaningful knowledge-concept path. | Concept instruction | Student log data | Feature selection using Elastic Net (LASSO) + RF algorithm | Personalised learning |
|
[14] | Empower a question-answering Chabot to respond to queries. | Question answering | Wikipedia | The Wit.ai NLP model | N/A |
|
[33] | Enable semantic querying, predictive modelling, and reasoning for student behaviour analysis. | Prediction of educational outcomes | LMSs (Moodle, COCO Udemy, Open University) | OWL 2 ontology | N/A |
|
[34] | Support collaborative knowledge building. | Educational recommendations and educational assessment and feedback | Online discussion transcripts | BERT-BiLSTM-CRF | Collaborative learning |
|
[35] | Improve collaborative learning performance. | Educational recommendations and educational assessment and feedback | Online discussion transcripts | BERT-BiLSTM-CRF and BERT-Random Forest | Collaborative learning |
|
[36] | Promote knowledge elaboration. | Educational assessment and feedback | Online discussion transcripts | BERT-BiLSTM-CRF | Collaborative learning |
|
[37] | Predict students’ mastery of knowledge based on their learning activity. | Prediction of educational outcomes | English problem-solving record data from EdNet and ASSIST2017 | Graph neural network | Personalised learning |
|
[38] | Improve the recommendation of learning activities. | Educational recommendations | Textbooks, student learning activities | Similarity measures | Personalised learning |
|
[39] | Help students find out courses and knowledge related to graduation requirements. | Learning resources searching | Syllabi, teachers’ lesson plans, and webpages | Ontology construction, Large Language Models | Personalised learning |
|
[40] | Offer learners a semantic representation of domain concepts. | Concept instruction | Learning materials, Wikipedia, and Dbpedia | SqueezeBERT, word and sentence embeddings | Personalised learning |
|
[41] | Visualise the knowledge construction process. | Concept instruction | Lecture slides, Wikipedia, and videos | N/A | Immersive learning, collaborative learning |
|
[9] | Identify students at risk of failing a course. | Prediction of educational outcomes | Course information, student historical features and performance | Ontology mapping | N/A |
|
[16] | Help learners efficiently memorise and learn concepts. | Concept instruction | Textbooks, Baidupedia, and students’ classroom responses (collected using sensors) | Graph convolutional network (GCN), BiLSTM-CRF | Personalised learning |
|
[42] | Support knowledge sharing and learning in groups. | Concept instruction | DBpedia, Wikidata, and YAGO3 | Embedding-based knowledge map fusion algorithm | Collaborative learning |
|
[43] | Predict and analyse student educational outcomes. | Prediction of educational outcomes | The Linked Data for Education dataset (learning resources), the Open Academic Graph dataset, DBpedia, and MOOC platforms | Feature selection using LSTM_GOA algorithm | N/A |
|
[44] | Show the logic between knowledge. | Concept instruction | Individually constructed knowledge graphs by teachers and students | Knowledge fusion | Project-based learning, collaborative learning |
|
[45] | Assist students in reviewing lectures and comprehending course material. | Learning resources searching | Textbooks | Ontology Rela-Ops model | N/A |
|
[46] | Represent relations of knowledge components and retrieve contents of queries. | Learning resources searching | Textbooks and workbooks | Ontology Rela-Ops model | N/A |
|
[47] | Enables learners to perform non-linear navigation of learning contents. | Concept instruction | Video lectures | Speech-to-text techniques and semantic analysis | N/A |
|
[17] | Help students quickly and systematically grasp the framework and key content of video lectures. | Concept instruction | Video lectures | BERT, name entity recognition, and YOLOv3 | N/A |
|
[48] | Estimate students’ proficiency in knowledge concepts. | Prediction of educational outcomes | Online tutoring system and E-learning platform | Recurrent neural network | N/A |
|
[12] | Improve the curriculum system in higher education institutions. | Curriculum design and management | Course syllabi in the current university and the benchmarking top universities, teacher information | Latent Dirichlet Allocation | N/A |
|
[13] | Construct meaningful connections between social media and formal learning. | Curriculum design and management | Course information, social media (Facebook, Twitter) | Semantic mediawiki | Collaborative learning |
|
[49] | Provide concept visualisation and promote cognitive engagement. | Concept instruction | Course materials | Named-entity recognition and NLP | Problem-based learning |
|
[50] | Provide semantic search for reskilling and upskilling options. | Educational recommendations | Education providers’ Webpages | Resource Description Framework, slot filling | N/A |
|
[51] | Manage and present various modes of educational resources. | Knowledge management | Online education resources (e.g., Baidu entries), offline education resources (e.g., PowerPoints and class audios) | BERT-BiLSTM-CRF | N/A |
|
[11] | Minimise the time instructors have to spend looking for teaching material. | Educational recommendations | DBpedia Knowledge Graphs, instructor’s teaching plans | Semantic similarity | N/A |
|
[52] | Provide a comprehensive resource for students. | Learning resources searching | National Science Foundation, Survey of Earned Doctorates Restricted Data Analysis System, and Wikidata | Semantic Extract Transform and Load-er | N/A |
|
[53] | Enhance online course recommendations to address user characteristics. | Educational recommendations | Two public datasets (Movielens-20M, Book-Crossing) and an industrial dataset | Graph convolutional network, Collaborative filtering algorithms | Personalised learning |
|
[54] | Predict appropriate resources with the highest ranking linked to the learner’s interests. | Educational recommendations | E-content (e.g., E-Library, Coursera), user selections out of these materials | NLP | Personalised learning |
|
[55] | Help students build complex knowledge structures. | Concept instruction | Educational resources, learning behaviour | Node feature extraction method | N/A |
|
[56] | Help students access learning resources accurately and efficiently. | Educational recommendations | Learning behaviours, course information | Collaborative filtering algorithms, similarity measures | Personalised learning |
|
[57] | Present knowledge units in a semantically well-organised manner. | Concept instruction | Textbooks | NLP | N/A |
|
[58] | Communicate knowledge logically and coherently. | Concept instruction | N/A | Entity extraction, relation extraction, and attribute extraction | N/A |
|
[59] | Improve the course recommendation accuracy for music education | Educational recommendations | Audio, sheet music, chants, and metadata | Resource Description Framework | Personalised learning |
|
[60] | Enable students to seek out and examine educational resources that align with their interests. | Learning resources searching | Textbooks | Wikipedia Miner, NLP | Networked learning |
|
[61] | Provide personalised learning content according to the skill set of learners. | Educational recommendations | Learning assessment, course materials | Named-entity recognition | Personalised learning |
|
[62] | Predict students’ learning behaviour in order to provide feedback on the teaching effect. | Question answering | Subject materials and syllabi | Conditional Random Fields, TF-IDF | Problem-based learning, cognitive learning |
|
[63] | Effectively provide information in response to searches for content that is useful to learners. | Learning resources searching | Webpages | Bi-LSTM model | N/A |
|
[64] | Recommend personalised exercises to students in an appropriate order. | Educational recommendations | Textbook, Wikipedia, and testing behaviour of students | Collaborative filtering | Personalised learning |
|
[65] | Provide personalised content for learners. | Educational recommendations | N/A | Collaborative filtering | Personalised learning |
|
[66] | Effectively recommend learning resources to learners. | Educational recommendations | Webpages | Collaborative filtering | Personalised learning |
|
[67] | Support students in constructing and expanding their knowledge structure. | Concept instruction | Student-generated knowledge graphs | N/A | Collaborative learning |
|
[68] | Provide a well-structured overview of knowledge in nuclear power engineering. | Concept instruction | DBpedia | Semantic Similarity Measure, Resource Description Framework | N/A |
|
[69] | Enhance scientific retrieval efficiency. | Knowledge management | Three scientific databases: Web of Science, Engineering Village, and EBSCO | Machine-learning algorithms | Problem-based learning |
|
[70] | Support personalised teaching services and adaptive learning solutions. | Concept instruction | Standard curriculum data and learning assessment data | Gated recurrent unit network, probabilistic association rule mining algorithm | Personalised learning |
|
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Qu, K.; Li, K.C.; Wong, B.T.M.; Wu, M.M.F.; Liu, M. A Survey of Knowledge Graph Approaches and Applications in Education. Electronics 2024, 13, 2537. https://doi.org/10.3390/electronics13132537
Qu K, Li KC, Wong BTM, Wu MMF, Liu M. A Survey of Knowledge Graph Approaches and Applications in Education. Electronics. 2024; 13(13):2537. https://doi.org/10.3390/electronics13132537
Chicago/Turabian StyleQu, Kechen, Kam Cheong Li, Billy T. M. Wong, Manfred M. F. Wu, and Mengjin Liu. 2024. "A Survey of Knowledge Graph Approaches and Applications in Education" Electronics 13, no. 13: 2537. https://doi.org/10.3390/electronics13132537
APA StyleQu, K., Li, K. C., Wong, B. T. M., Wu, M. M. F., & Liu, M. (2024). A Survey of Knowledge Graph Approaches and Applications in Education. Electronics, 13(13), 2537. https://doi.org/10.3390/electronics13132537