Evaluation system of innovation and entrepreneurship education based on the GA-SVM method
DOI:
https://doi.org/10.54691/bcpssh.v18i.906Keywords:
innovation and entrepreneurship education; evaluation system, Analytic Hierarchy Process; GA-SVM.Abstract
The demand for innovative and entrepreneurial talents in today's society is becoming more and more urgent. As the main position for the country to cultivate innovative and entrepreneurial talents, universities need to pay more attention to the cultivation of innovative and entrepreneurial talents. This paper reasonably constructs the evaluation index system of innovation and entrepreneurship education, then uses the analytic hierarchy process to determine the weight of each index, and optimizes the use of GA-SVM to construct the evaluation model of innovation and entrepreneurship education, so as to obtain a reasonable and effective evaluation system of innovation and entrepreneurship education in universities, and provide a reference basis for the cultivation of innovation and entrepreneurship talents in universities.
Downloads
References
Cai Meiju, Zhu Xiaoli. Research on the construction of the evaluation index system for the selection of innovative and entrepreneurial talents [J]. Value Engineering, 2019,38(29):214-216.
Li Anli, Qu Lei, Liu Wei. Research on the Comprehensive Index System of Scientific and Technological Talent Evaluation Based on AHP [J]. Science and Technology and Industry, 2021,21(04):139-144.
Li Bomin, Xia Chunmeng. Research on personal credit evaluation model based on SVM and GA-SVM [J]. Gansu Science and Technology, 2021,50(08):87-89.
Jiang Minghui, Yuan Xuchuan. SVM Model of Personal Credit Evaluation Based on GA Optimization [C]//. Proceedings of the 26th China Control Conference . , 2007:3263-3267.
Li Yunfei, Li Pengyan.Research on Financial Evaluation Model of Listed Companies Based on GA-SVM[J].Journal of Yanshan University,2011,35(02):184-188.
Zhang Ximeng. Quality classification of black fungus polyacrylamide based on GA-SVM [D]. Northeast Forestry University, 2019. DOI: 10.27009/d.cnki.gdblu. 2019 .000470.