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Artificial Intelligence Network Embedding, Entrepreneurial Intention, and Behavior Analysis for College Students' Rural Tourism Entrepreneurship.
Front Psychol. 2022; 13:843679.FP

Abstract

To promote the development of the rural economy and improve entrepreneurship education in colleges and universities, college students' willingness and behavior toward rural tourism entrepreneurship were investigated in this study. First of all, based on the previous research results, the influencing factor model was determined for college students' entrepreneurial intention. Second, a questionnaire survey was made to collect data from a university in Xi'an City. Finally, the artificial neural network (ANN), improved by a genetic algorithm (GA) based on an artificial intelligence network, was used to study the relationship between college students' entrepreneurial intention and behavior, and the simulation was carried out on MATLAB2013b software. The results show that the average evaluation accuracy is 81.13% for 60 groups of data using the unmodified back propagation neural network (BPNN) algorithm, while the average evaluation accuracy is 92.17% for the BPNN algorithm improved and optimized by GA, with an ascent of 11.04%. Therefore, the BPNN algorithm improved and optimized by GA is better than the unmodified BPNN algorithm; It is also feasible and effective in the analysis of influencing factors of college students' entrepreneurial intention and behavior. The research provides a basis for colleges and universities to carry out entrepreneurship education on a large scale and to cultivate their innovative talents.

Authors+Show Affiliations

School of Culture and Communication, Guilin Tourism University, Guilin, China.

Pub Type(s)

Journal Article

Language

eng

PubMed ID

35712173

Citation

Kang, Zhonghui. "Artificial Intelligence Network Embedding, Entrepreneurial Intention, and Behavior Analysis for College Students' Rural Tourism Entrepreneurship." Frontiers in Psychology, vol. 13, 2022, p. 843679.
Kang Z. Artificial Intelligence Network Embedding, Entrepreneurial Intention, and Behavior Analysis for College Students' Rural Tourism Entrepreneurship. Front Psychol. 2022;13:843679.
Kang, Z. (2022). Artificial Intelligence Network Embedding, Entrepreneurial Intention, and Behavior Analysis for College Students' Rural Tourism Entrepreneurship. Frontiers in Psychology, 13, 843679. https://doi.org/10.3389/fpsyg.2022.843679
Kang Z. Artificial Intelligence Network Embedding, Entrepreneurial Intention, and Behavior Analysis for College Students' Rural Tourism Entrepreneurship. Front Psychol. 2022;13:843679. PubMed PMID: 35712173.
* Article titles in AMA citation format should be in sentence-case
TY - JOUR T1 - Artificial Intelligence Network Embedding, Entrepreneurial Intention, and Behavior Analysis for College Students' Rural Tourism Entrepreneurship. A1 - Kang,Zhonghui, Y1 - 2022/05/27/ PY - 2021/12/26/received PY - 2022/04/22/accepted PY - 2022/6/17/entrez PY - 2022/6/18/pubmed PY - 2022/6/18/medline KW - artificial intelligence network KW - college students’ entrepreneurial mental resilience KW - entrepreneurial intention KW - entrepreneurial willingness KW - rural tourism SP - 843679 EP - 843679 JF - Frontiers in psychology JO - Front Psychol VL - 13 N2 - To promote the development of the rural economy and improve entrepreneurship education in colleges and universities, college students' willingness and behavior toward rural tourism entrepreneurship were investigated in this study. First of all, based on the previous research results, the influencing factor model was determined for college students' entrepreneurial intention. Second, a questionnaire survey was made to collect data from a university in Xi'an City. Finally, the artificial neural network (ANN), improved by a genetic algorithm (GA) based on an artificial intelligence network, was used to study the relationship between college students' entrepreneurial intention and behavior, and the simulation was carried out on MATLAB2013b software. The results show that the average evaluation accuracy is 81.13% for 60 groups of data using the unmodified back propagation neural network (BPNN) algorithm, while the average evaluation accuracy is 92.17% for the BPNN algorithm improved and optimized by GA, with an ascent of 11.04%. Therefore, the BPNN algorithm improved and optimized by GA is better than the unmodified BPNN algorithm; It is also feasible and effective in the analysis of influencing factors of college students' entrepreneurial intention and behavior. The research provides a basis for colleges and universities to carry out entrepreneurship education on a large scale and to cultivate their innovative talents. SN - 1664-1078 UR - https://www.unboundmedicine.com/medline/citation/35712173/Artificial_Intelligence_Network_Embedding_Entrepreneurial_Intention_and_Behavior_Analysis_for_College_Students'_Rural_Tourism_Entrepreneurship_ DB - PRIME DP - Unbound Medicine ER -
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