Application research on classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO algorithm

With the development of innovation and entrepreneurship education, the classification and integration of educational resources have become the key to improving education quality. However, traditional methods cannot deal with complex and multi-dimensional educational resource data. Therefore, this st...

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Main Author: Yongjian Dong
Format: Article
Language:English
Published: Elsevier 2025-12-01
Series:Systems and Soft Computing
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Online Access:http://www.sciencedirect.com/science/article/pii/S2772941925001449
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author Yongjian Dong
author_facet Yongjian Dong
author_sort Yongjian Dong
collection DOAJ
description With the development of innovation and entrepreneurship education, the classification and integration of educational resources have become the key to improving education quality. However, traditional methods cannot deal with complex and multi-dimensional educational resource data. Therefore, this study proposes a classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO (graph neural networks and particle swarm optimization). The model uses the powerful feature extraction ability of GNN to dig deep into the internal relationship between educational resources. At the same time, it optimizes the classification and integration process with the help of the PSO algorithm's global search advantage. In the experimental link, we constructed an experimental dataset containing 10,000 innovation and entrepreneurship education resources, covering multi-dimensional information such as courses, cases, and teachers. Through comparative experiments, the GNN-PSO model's classification accuracy reached 92.5 %, 15.3 percentage points higher than that of the traditional machine learning model. Regarding resource integration efficiency, the processing time of the GNN-PSO model is shortened by 40 %, which significantly improves the management efficiency of educational resources. In addition, this study explores the application effect of the model under different educational resources. It finds that the GNN-PSO model has good generalization ability and scalability. The experimental results confirm that the classification and integration model of innovation and entrepreneurship education resources based on the GNN-PSO algorithm improves classification accuracy and optimizes the resource integration process, providing strong support for the development of innovation and entrepreneurship education.
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spelling doaj-art-03de5288ba7d4d8ca76e81fffccd9aa82025-08-20T03:29:34ZengElsevierSystems and Soft Computing2772-94192025-12-01720032610.1016/j.sasc.2025.200326Application research on classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO algorithmYongjian Dong0Corresponding author.; School of Information Engineering, Changzhou Vocational Institute of Mechatronic Technology, Changzhou, 213164, ChinaWith the development of innovation and entrepreneurship education, the classification and integration of educational resources have become the key to improving education quality. However, traditional methods cannot deal with complex and multi-dimensional educational resource data. Therefore, this study proposes a classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO (graph neural networks and particle swarm optimization). The model uses the powerful feature extraction ability of GNN to dig deep into the internal relationship between educational resources. At the same time, it optimizes the classification and integration process with the help of the PSO algorithm's global search advantage. In the experimental link, we constructed an experimental dataset containing 10,000 innovation and entrepreneurship education resources, covering multi-dimensional information such as courses, cases, and teachers. Through comparative experiments, the GNN-PSO model's classification accuracy reached 92.5 %, 15.3 percentage points higher than that of the traditional machine learning model. Regarding resource integration efficiency, the processing time of the GNN-PSO model is shortened by 40 %, which significantly improves the management efficiency of educational resources. In addition, this study explores the application effect of the model under different educational resources. It finds that the GNN-PSO model has good generalization ability and scalability. The experimental results confirm that the classification and integration model of innovation and entrepreneurship education resources based on the GNN-PSO algorithm improves classification accuracy and optimizes the resource integration process, providing strong support for the development of innovation and entrepreneurship education.http://www.sciencedirect.com/science/article/pii/S2772941925001449Graph neural networkParticle swarm optimizationInnovation and entrepreneurship educationResource classificationResource integration
spellingShingle Yongjian Dong
Application research on classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO algorithm
Systems and Soft Computing
Graph neural network
Particle swarm optimization
Innovation and entrepreneurship education
Resource classification
Resource integration
title Application research on classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO algorithm
title_full Application research on classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO algorithm
title_fullStr Application research on classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO algorithm
title_full_unstemmed Application research on classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO algorithm
title_short Application research on classification and integration model of innovation and entrepreneurship education resources based on GNN-PSO algorithm
title_sort application research on classification and integration model of innovation and entrepreneurship education resources based on gnn pso algorithm
topic Graph neural network
Particle swarm optimization
Innovation and entrepreneurship education
Resource classification
Resource integration
url http://www.sciencedirect.com/science/article/pii/S2772941925001449
work_keys_str_mv AT yongjiandong applicationresearchonclassificationandintegrationmodelofinnovationandentrepreneurshipeducationresourcesbasedongnnpsoalgorithm