Title: Evaluation of students' innovation and entrepreneurship based on genetic neural network algorithm under sustainable development in higher education institutions
Authors: Xuanyuan Wu; Yi Xiao; Anhua Liu
Addresses: Teaching Department of Public Courses, Hunan Communication Polytechnic, Hunan Changsha, 410132, China ' Modern Education Technology Center, Hunan Communication Polytechnic, Hunan Changsha, 410132, China ' College of Continuing Education, Hunan Vocational College of Science and Technology, Hunan Changsha, 410004, China
Abstract: The study aims to assess the innovation and entrepreneurship ability of higher vocational students to support the sustainable development of higher education institutions. This paper investigates the key factors influencing students' innovation and entrepreneurship and establishes a comprehensive evaluation system. A combined weight model is constructed using the AHP and entropy method to determine the weight of the evaluation index. Genetic algorithms are used to optimise backpropagation neural networks to improve learning speed and reduce the risk of overfitting. The results showed that the proposed model exhibited lower mean square error and higher accuracy under different sample sizes and training set ratios. The comprehensive weight of evaluation indicators 1, 2 and 5 was higher, and the score of scheme A was the highest (0.536). GA-BP algorithm was superior to BPNN, random forest, and decision tree algorithms in performance. The paper presents a scientific and objective evaluation system for students' innovation and entrepreneurship abilities, which is beneficial for higher education institutions to cultivate students' innovation and entrepreneurship more effectively. In addition, the GA-BP model provides a new perspective for solving complex educational evaluation problems and promotes the development of educational evaluation methods.
Keywords: higher education institutions; HEIs; genetic algorightm; GA; innovation and entrepreneurship; In/En; sustainability; backpropagation neural network; BPNN.
DOI: 10.1504/IJWET.2025.145515
International Journal of Web Engineering and Technology, 2025 Vol.20 No.1, pp.43 - 65
Received: 09 May 2024
Accepted: 30 Aug 2024
Published online: 02 Apr 2025 *