This work is licensed under the Creative Commons Attribution 4.0 International License.
Xu, Q. (2021). Evaluation of rural tourism spatial pattern based on multifactor-weighted neural network algorithm model in big data era. Scientific programming(Pt.14), 2021.Search in Google Scholar
Liang, Y., & Shi, C. (2020). Efficiency evaluation and optimization of rural ecotourism space based on dea model. International Journal of Low-Carbon Technologies.Search in Google Scholar
Tan, Q. (2016). Research on the characteristics of tourism consumption based on network data: a urban-rural perspective. International Journal of Smart Home, 10(5), 241-252.Search in Google Scholar
Ao, Y. (2017). Integrated development mode of urban and rural tourism based on neural network and its realization mechanism. Boletin Tecnico/technical Bulletin, 55(20), 56-62.Search in Google Scholar
Dong, Y. (2022). A study of rural tourism development and tourism economic quality based on regional difference analysis. International journal of sustainable development.Search in Google Scholar
Chuanlong, H., Long, L., & Huan, L. (2017). Development of all-for-one tourism in suzhou under the background of urban-rural integration: data mining perspective. Revista de la Facultad de Ingenieria, 32(2), 37-45.Search in Google Scholar
Zhang, X. J., Yu, L. M., & Gao, W. L. (2017). Agricultural informatization: research and design on the rural tourism recommendation system. International Agricultural Engineering Journal, 26(4), 349-355.Search in Google Scholar
Li, K. (2022). Swot analysis of e-commerce development of rural tourism farmers’ professional cooperatives in the era of big data. IET communications(5), 16.Search in Google Scholar
Zhang, X., Yu, L., Wang, M., & Gao, W. (2018). Fm-based: algorithm research on rural tourism recommendation combining seasonal and distribution features. Pattern Recognition Letters.Search in Google Scholar
Shao, T. (2022). The spatial perception and spatial feature of rural cultural landscape in the context of rural tourism. Sustainability, 14.Search in Google Scholar
Ermolaev, V. A., Yashalova, N. N., & Ruban, D. A. (2019). Cheese as a tourism resource in russia: the first report and relevance to sustainability. Sustainability, 11.Search in Google Scholar
Guan, J., Gao, J., & Zhang, C. (2019). Food heritagization and sustainable rural tourism destination: the case of china’s yuanjia village. Sustainability, 11.Search in Google Scholar
Li, H., Nijkamp, P., Xie, X., & Liu, J. (2020). A new livelihood sustainability index for rural revitalization assessment—a modelling study on smart tourism specialization in china. Sustainability, 12.Search in Google Scholar
Chen, Y., & Liang, H. (2021). Research on the construction of rural complex in the context of rural revitalization based on fahp. Journal of Intelligent and Fuzzy Systems(3), 1-10.Search in Google Scholar
He, Y., Gao, X., Wu, R., Wang, Y., & Choi, B. R. (2021). How does sustainable rural tourism cause rural community development?. Sustainability, 13.Search in Google Scholar
Liu, X., Liu, Z., Zhong, H., Jian, Y., & Shi, L. (2021). Multi-dimension evaluation of rural development degree and its uncertainties: a comparison analysis based on three different weighting assignment methods. Ecological Indicators, 130, 108096-.Search in Google Scholar
Wang, L., & Wen, C. (2021). Traditional villages in forest areas: exploring the spatiotemporal dynamics of land use and landscape patterns in enshi prefecture, china. Forests, 12(65).Search in Google Scholar
Duan, Y., Zhang, L., Fan, X., Hou, Q., & Hou, X. (2020). Smart city oriented ecological sensitivity assessment and service value computing based on intelligent sensing data processing. Computer Communications, 160.Search in Google Scholar
Zhou, J. (2021). Statistical research on the development of rural tourism economy industry under the background of big data. Mobile Information Systems.Search in Google Scholar
Risteski, M., & Rakichevikj, G. (2018). Analisys of the support services in the south-west planning region for the development of rural tourism. International Journal of Knowledge Management, 22(2), 573-578.Search in Google Scholar
Sun, J., & Chang, T. (2016). Prediction of rural residents’ tourism demand based on back propagation neural network. International Journal of Applied Decision Sciences, 9(3), 320.Search in Google Scholar
Nathan, P. F., Sadiq, M., Ahmad, Arome, N. E., & Zden, Z. (2020). Solid state technology challenges and benefits of rural planning for the development of rural tourism in gashaka local government area (lga),taraba state, nigeria. Solid State Technology, 63(1).Search in Google Scholar
Tsang, W. K., & Benoit, D. F. (2020). Gaussian processes for daily demand prediction in tourism planning. Journal of Forecasting.Search in Google Scholar
Li, Y. G., & Gan, H. C. (2021). Tourism information data processing method based on multi-source data fusion. Journal of Sensors.Search in Google Scholar
Huang, B. F. F., & Boutros, P. C. (2016). The parameter sensitivity of random forests. BMC Bioinformatics, 17.Search in Google Scholar
Zhi, Y., Jin, Z., Lu, L., Yang, T., & Li, X. (2021). Improving atmospheric corrosion prediction through key environmental factor identification by random forest-based model. Corrosion Science, 178, 109084.Search in Google Scholar
Yin, Y., Xu, W., Xu, Y., Li, H., & Yu, L. (2017). Collaborative qos prediction for mobile service with data filtering and slopeone model. Mobile Information Systems,2017,(2017-6-22), 2017(pt.3), 1-14.Search in Google Scholar
Xueting, L., & Jan, N. (2022). Personalized recommendation algorithm of tourist attractions based on transfer learning. Mathematical Problems in Engineering, 2022.Search in Google Scholar
Hu, J., Chen, X., & Qian, L. (2017). Sina friends recommendation algorithm based on random walking and collaborative filtering. Boletin Tecnico/Technical Bulletin, 55(4), 507-515.Search in Google Scholar
Wu, Y., Zhang, X., Yu, H., Wei, S., & Guo., W. (2017). Collaborative filtering recommendation algorithm based on user fuzzy similarity. Intelligent Data Analysis.Search in Google Scholar