학술논문

Management and entrepreneurship management mechanism of college students based on support vector machine algorithm.
Document Type
Article
Source
Computational Intelligence. Jun2022, Vol. 38 Issue 3, p842-854. 13p.
Subject
*DEEP learning
*COLLEGE students
*SUPPORT vector machines
*BOLTZMANN machine
*PERSONNEL management
*ALGORITHMS
*FEATURE extraction
Language
ISSN
0824-7935
Abstract
For the employment and entrepreneurship management of college students, the application of big data technology can effectively improve their work efficiency, that is, the support vector machine algorithm is applied to the employment and entrepreneurship management of college students. Based on deep learning technology, the deep neural network is constructed based on SVR and restrictive Boltzmann machine, namely, SVR‐DBN, including theoretical derivation of model architecture, design and selection of model training algorithms, and the modeling steps and flow charts are given, and finally applied to the influence factor analysis. The multiangle comparison proves that the proposed depth model has excellent feature extraction ability and regression prediction. The results show that the algorithm has higher accuracy and has a 26% improvement over traditional algorithms. The research is of great significance to the improvement of the efficiency of employment and entrepreneurship management and the application of support vector machine algorithms. [ABSTRACT FROM AUTHOR]