Intelligent course recommendation based on neural network for innovation and entrepreneurship education of college students

This paper focuses on intelligence course recommendations for college students' innovation and entrepreneurship education. Firstly, the traditional collaborative filtering algorithm was introduced, and then a new recommendation technique was designed based on an artificial neural network (ANN)....

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Veröffentlicht in:Informatica (Ljubljana) 2022-03, Vol.46 (1), p.95-100
1. Verfasser: Zou, Jinding
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description This paper focuses on intelligence course recommendations for college students' innovation and entrepreneurship education. Firstly, the traditional collaborative filtering algorithm was introduced, and then a new recommendation technique was designed based on an artificial neural network (ANN). The experimental data were collected through a crawler framework. The two methods were compared and analyzed. It was found that the training time of collaborative filtering and ANN was 16.78 s and 12.36 s, the testing time was 2.64 s and 2.12 s, the hit rate (HR) were 0.6078 and 0.6264, and the normalized discounted cumulative gain (NDCG) values were 0.2948 and 0.3356, respectively. The results reveal that ANN was more efficient in computation and better in recommendations. The results demonstrate the effectiveness of the ANN method for intelligent course recommendations. The method can be applied to the selection of innovation and entrepreneurship education courses for college students.
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subjects Accuracy
Algorithms
Artificial neural networks
Collaboration
College students
Colleges & universities
Education
Education reform
Employment
Entrepreneurs
Entrepreneurship
Entrepreneurship education
Filtration
Higher education
Innovations
Intelligence
Learning
Neural networks
Society
Students
Testing time
title Intelligent course recommendation based on neural network for innovation and entrepreneurship education of college students
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