This work is licensed under the Creative Commons Attribution 4.0 International License.
Yang, C. (2021). Analysis on the Path of Ideological and Political Education and Popularization of Marxism in Colleges and Universities. Journal of Higher Education Research, 2(5).Search in Google Scholar
Zheng, R., Zheng, G. (2020). An artificial intelligence data mining technology based evaluation model of education on political and ideological strategy of students. Journal of Intelligent and Fuzzy Systems, 40(5), 1-12.Search in Google Scholar
Muhtaseb, L. E., Brown, N. J., Kayyali, A. W. (2016). Arguing about family law in jordan: disconnected spheres?. International Journal of Middle East Studies, 48(04), 721-741.Search in Google Scholar
Baron, C. (2019). The rise, fall, and resurrection of (ideological) scientism. Zygon, 54(2), 299-323.Search in Google Scholar
Dai, L., Wu, X., Lu, L. (2021). Practice and Exploration of Ideological and Political Teaching in Colleges and Universities Based On the Internet. ICIMTECH 21: The Sixth International Conference on Information Management and Technology.Search in Google Scholar
Li, F. (2018). Research Method Innovation of College Students’ Ideological and Political Education Based on Cognitive Neuroscience. Neuroquantology, 16(5).Search in Google Scholar
Zhu, L. (2021). Research on the design and application of ideological and political education platform in colleges and universities based on Moodle. Journal of Intelligent and Fuzzy Systems, 3, 1-8.Search in Google Scholar
Sun, X., Zhang, Y. (2021). Research on the framework of university ideological and political education management system based on artificial intelligence. Journal of Intelligent and Fuzzy Systems, 5, 1-10.Search in Google Scholar
Xia, Y. (2020). Big data based research on the management system framework of ideological and political education in colleges and universities. Journal of Intelligent and Fuzzy Systems, 6, 1-10.Search in Google Scholar
Huang, X., Zhao, J., Fu, J., et al. Effectiveness of ideological and political education reform in universities based on data mining artificial intelligence technology. Journal of Intelligent and Fuzzy Systems, 40(2), 1-12.Search in Google Scholar
Fei, P. (2014). The Guidance of “The Task of Youth League” on the Cultivation of University Counselors’ Capabilities. Higher education of social science.Search in Google Scholar
Men, S., Yuan, C. (2021). The Ideological and Political Education in Colleges and Universities Based on the Concept of Cooperative Education. IPEC 2021: 2021 2nd Asia-Pacific Conference on Image Processing, Electronics and Computers.Search in Google Scholar
Park, W. J. (2021). Deriving Major Fire Risk Evaluation Items Utilizing Spatial Information Convergence Technology in Dense Areas of Small Obsolete Buildings. Sustainability, 13.Search in Google Scholar
Busra. (2016). ITCSE 2016: Fifth International Conference on Information Technology Convergence and Services.Search in Google Scholar
Busra. (2015). ITCSE 2015: Fourth International Conference on Information Technology Convergence and Services.Search in Google Scholar
Lee, E., Ko, M., Shin, M., et al. (2021). The Effect of Information Technology Convergence Gamification Training in Community-Dwelling Older People: A Multicenter, Randomized Controlled Trial. Journal of the American Medical Directors Association.Search in Google Scholar
Linney,, J. A. (2017). Convergence of Information Technology: A Behavioral Study.Search in Google Scholar
Filc, D., Ram U. (2015). Marxism after postmodernism: Rethinking the emancipatory political subject. Current Sociology, 62(3), 295-313.Search in Google Scholar
Liang, X. Z., Pang, X. Y., Zhang, Z. M., et al. (2019). A quantitative spectral component analysis method based on maximum likelihood. Optics Express.Search in Google Scholar
Liao, Y., Liao, Y., Zhao, W., et al. (2020). Study on Mangrove of Maximum Likelihood: Reclassification Method in Xiezhou Bay. Journal of Coastal Research, 102(sp1).Search in Google Scholar
Nunes, K., Zheng, X., Torres M., et al. (2016). HLA imputation in an admixed population: An assessment of the 1000 Genomes data as a training set. Human Immunology, 77(3), 307-312.Search in Google Scholar
An, C., Park, Y. W., Ahn S. S., et al. (2021). Radiomics machine learning study with a small sample size: Single random training-test set split may lead to unreliable results. PLoS ONE, 8.Search in Google Scholar
Zhang, Y., Li, T., Li, B., et al. (2020). Fault Detection Method of AC Charging Pile in Coastal Cities Based on Kalman Filtering Algorithm. Journal of Coastal Research, 104(sp1).Search in Google Scholar
Li, N., Gao, Y., Wang, Y., Liu, Z., Guan, L., & Liu, X. (2019). A low-cost underground garage navigation switching algorithm based on kalman filtering. Sensors, 19(8), 1861.Search in Google Scholar
Zhu, W., Wang, W., & Yuan, G. (2016). An improved interacting multiple model filtering algorithm based on the cubature Kalman filter for maneuvering target tracking. Sensors, 16(6), 805.Search in Google Scholar
Hk, L. J., Lindstrm, E. (2016). Efficient computation of the quasi likelihood function for discretely observed diffusion processes. Computational Statistics & Data Analysis.Search in Google Scholar
Riad, F. H., Sabry, M. A., Almetwally, E. M., et al. (2022). On Extended Neoteric Ranked Set Sampling Plan: Likelihood Function Derivation and Parameter Estimation. Complexity.Search in Google Scholar
Zhang, X., Zheng, Y., Andrew, C. (2022). Surface wave dispersion inversion using an energy likelihood function. Geophysical Journal International.Search in Google Scholar
Regalado, F. F. J., Esenarro, D., Reátegui, M. D., et al. (2021). Model based on balanced scorecard applied to the strategic plan of a peruvian public entity. 3c Empresa: investigación y pensamiento crítico, 10(4), 127-147.Search in Google Scholar