Knowledge Graph Entity Similarity Calculation under Active Learning
To address the objectives of the adaptive learning platform, the requirements of the system in terms of business, functionality, and performance are mainly analysed, and the design of functions and database is completed; then, an updatable learner model is constructed based on the cognitive diagnosi...
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Online Access: | http://dx.doi.org/10.1155/2021/3522609 |
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doaj-175915b9c6fe4bb59bf414bad4b91ab62021-06-21T02:25:05ZengHindawi-WileyComplexity1099-05262021-01-01202110.1155/2021/3522609Knowledge Graph Entity Similarity Calculation under Active LearningLianhuan Li0Zheng Zhang1Shaoda Zhang2School of International EducationSchool of Computer and SoftwareCofoe Medical Technology Company LimitedTo address the objectives of the adaptive learning platform, the requirements of the system in terms of business, functionality, and performance are mainly analysed, and the design of functions and database is completed; then, an updatable learner model is constructed based on the cognitive diagnosis model and resource preference attributes; then, the construction of the knowledge map is completed based on embedding to achieve knowledge point alignment, and based on this, the target knowledge points of learners are located with the help of deep learning; at the same time, the target knowledge points are taken as the starting point to generate the best learning path by traversing the knowledge map, and the corresponding learning resources and test questions are recommended for them with the help of the architecture; finally, the adaptive learning platform is developed in the environment using the architecture. Also, the target knowledge point is used as the starting point to traverse the knowledge map to generate the best learning path, and the corresponding learning resources and test questions are recommended for the learner in combination with the learner model; finally, this study adopts an architecture for the development of an adaptive learning platform in the environment to realize online tests, score analysis, resource recommendation, and other functions. A knowledge graph fusion system supporting interactive facilitation between entity alignment and attribute alignment is implemented. Under a unified conceptual layer, this system can combine entity alignment and attribute alignment to promote each other and truly achieve the final fusion of the two graphs. Our experimental results on real datasets show that the entity alignment algorithm proposed in this paper has a great improvement in accuracy compared with the previous mainstream alignment algorithms. Also, the attribute alignment algorithm proposed in this paper, which calculates the similarity based on associated entities, outperforms the traditional methods in terms of accuracy and recall.http://dx.doi.org/10.1155/2021/3522609 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lianhuan Li Zheng Zhang Shaoda Zhang |
spellingShingle |
Lianhuan Li Zheng Zhang Shaoda Zhang Knowledge Graph Entity Similarity Calculation under Active Learning Complexity |
author_facet |
Lianhuan Li Zheng Zhang Shaoda Zhang |
author_sort |
Lianhuan Li |
title |
Knowledge Graph Entity Similarity Calculation under Active Learning |
title_short |
Knowledge Graph Entity Similarity Calculation under Active Learning |
title_full |
Knowledge Graph Entity Similarity Calculation under Active Learning |
title_fullStr |
Knowledge Graph Entity Similarity Calculation under Active Learning |
title_full_unstemmed |
Knowledge Graph Entity Similarity Calculation under Active Learning |
title_sort |
knowledge graph entity similarity calculation under active learning |
publisher |
Hindawi-Wiley |
series |
Complexity |
issn |
1099-0526 |
publishDate |
2021-01-01 |
description |
To address the objectives of the adaptive learning platform, the requirements of the system in terms of business, functionality, and performance are mainly analysed, and the design of functions and database is completed; then, an updatable learner model is constructed based on the cognitive diagnosis model and resource preference attributes; then, the construction of the knowledge map is completed based on embedding to achieve knowledge point alignment, and based on this, the target knowledge points of learners are located with the help of deep learning; at the same time, the target knowledge points are taken as the starting point to generate the best learning path by traversing the knowledge map, and the corresponding learning resources and test questions are recommended for them with the help of the architecture; finally, the adaptive learning platform is developed in the environment using the architecture. Also, the target knowledge point is used as the starting point to traverse the knowledge map to generate the best learning path, and the corresponding learning resources and test questions are recommended for the learner in combination with the learner model; finally, this study adopts an architecture for the development of an adaptive learning platform in the environment to realize online tests, score analysis, resource recommendation, and other functions. A knowledge graph fusion system supporting interactive facilitation between entity alignment and attribute alignment is implemented. Under a unified conceptual layer, this system can combine entity alignment and attribute alignment to promote each other and truly achieve the final fusion of the two graphs. Our experimental results on real datasets show that the entity alignment algorithm proposed in this paper has a great improvement in accuracy compared with the previous mainstream alignment algorithms. Also, the attribute alignment algorithm proposed in this paper, which calculates the similarity based on associated entities, outperforms the traditional methods in terms of accuracy and recall. |
url |
http://dx.doi.org/10.1155/2021/3522609 |
work_keys_str_mv |
AT lianhuanli knowledgegraphentitysimilaritycalculationunderactivelearning AT zhengzhang knowledgegraphentitysimilaritycalculationunderactivelearning AT shaodazhang knowledgegraphentitysimilaritycalculationunderactivelearning |
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