1. Ricci, F., Rokach, L. and Shapira, B.Introduction to recommender systems handbook. In Recommender systems handbook Boston, MA: springer US, pp. 1-35, 2010 2. Vinayak, S., Sharma, R. and Singh, R.MOVBOK: A personalized social network based cross domain recommender system. Indian Journal of Science and Technology, vol. 9, no. 31, pp.1-10, 2016. 3. Sharma, R. and Singh, R.Evolution of recommender systems from ancient times to modern era: a survey. Indian Journal of Science and Technology, vol. 9, no. 20, pp.1-12, 2016 4. Jannach D., Zanker M., Felfernig A. and Friedrich G.Recommender systems: an introduction. Cambridge University Press, 2010 5. Guo L., Liang J., Zhu Y., Luo Y., Sun L. and Zheng X.Collaborative filtering recommendation based on trust and emotion. Journal of Intelligent Information Systems, vol. 53, pp.113-135, 2019. 6. Friedrich, G. and Jannach, D.Tutorial: Recommender Systems. InProceeding of the International Joint Conference on Artificial Intelligence, Barcelona, 2011. 7. Azadjalal M.M., Moradi P., Abdollahpouri A. and Jalili M.A trust-aware recommendation method based on Pareto dominance and confidence concepts. Knowledge-Based Systems, vol. 116, pp.130-143, 2017. 8. Cao J., Wu Z., Mao B. and Zhang Y.Shilling attack detection utilizing semi-supervised learning method for collaborative recommender system. World Wide Web, vol. 16, pp. 729-748, 2013. 9. Mane, M.B. and Panage, B.M.Content analysis of university library portal: A detail study of Jayakar Library Portal, Savitribai Phule University of Pune. International Journal of Library and Information Science, vol. 7, no. 5, pp.109-116, 2015. 10. Taylor W., Zhu X.H., Dekkers J. and Marshall B.Socio-economic factors affecting home internet usage patterns in Central Queensland, 2003. 11. Uppal M., Gupta D., Goyal N., Imoize A.L., Kumar A., Ojo S., Pani S.K., Kim Y. and Choi J.A Real-Time Data Monitoring Framework for Predictive Maintenance Based on the Internet of Things.Complexity, 2023. 12. Sharma, R., Vinayak, S. and Singh, R.Guide Me: A Research Work Area Recommender System. International Journal of Intelligent Systems and Applications, vol. 8, no. 9, pp. 30-37, 2016. 13. Lu J., Wu D., Mao M., Wang W., andZhang G,Recommender system application developments: a survey. Decision support systems, vol. 74, pp. 12-32, 2015. 14. Wang X., Zhao H., Wang Y., Tao H., andCao J.Supervised Prototypical Variational Autoencoder for Shilling Attack Detection in Recommender Systems. In International Conference on Data Mining and Big Data, Singapore: Springer Nature Singapore, pp. 231-245, 2022, November. 15. Moradi, R. and Hamidi, H.A New Mechanism for Detecting Shilling Attacks in Recommender Systems Based on Social Network Analysis and Gaussian Rough Neural Network with Emotional Learning. International Journal of Engineering, vol. 36, no. 2, pp. 321-334, 2023. 16. Patel, S.R., Bhoi, P.R. and Sharma, A.M.Field-testing of SPRERI's open core gasifier for thermal application. Biomass and Bioenergy, vol. 30, no. 6, pp. 580-583, 2006. 17. Freeman C.Technology policy and economic performance,Great Britain: Pinter Publishers, pp. 34, 1989. 18. Zarrinkalam, F. and Kahani, M.A multi-criteria hybrid citation recommendation system based on linked data. In 2012 2nd International eConference on Computer and Knowledge Engineering (ICCKE), IEEE, pp. 283-288, 2012, October. 19. Ghauth, K.I. and Abdullah, N.A.Learning materials recommendation using good learners’ ratings and content-based filtering. Educational technology research and development, vol. 58, pp.711-727, 2010. 20. Azizi, M. and Do, H.A collaborative filtering recommender system for test case prioritization in web applications. InProceedings of the 33rd annual ACM symposium on applied computing, pp. 1560-1567, 2018, April. 21. Nagarnaik, P. and Thomas, A.Survey on recommendation system methods. In 2015 2nd international conference on electronics and communication systems (ICECS), IEEE, pp. 1603-1608, 2015, February. 22. Raghuwanshi, S.K. and Pateriya, R.K. Recommendation systems: Techniques, challenges, application,evaluation. In Soft Computing for Problem Solving: SocProS2017, vol. 2, Springer Singapore, pp. 151-164, 2019. 23. Adomavicius, G. and Tuzhilin, A.Context-aware recommender systems. In Recommender systems handbook, Boston, MA: Springer US, pp. 217-253, 2010. 24. Wu Z., Wu J., Cao J. and Tao D.HySAD: A semi-supervised hybrid shilling attack detector for trustworthy product recommendation. InProceedings of the 18th ACM SIGKDD international conference on Knowledge discovery and data mining, pp. 985-993, 2012, August. 25. Horsburgh, B., Craw, S. and Massie, S.Learning pseudo-tags to augment sparse tagging in hybrid music recommender systems. Artificial Intelligence, vol. 219, pp. 25-39, 2015. 26. Sharma, S., Gupta, K. and Gupta, D.Recommender System: A bibliometric analysis. In IOP Conference Series: Materials Science and Engineering, vol. 1022, no. 1, pp. 012057, IOP Publishing, 2021. 27. Gupta D.A comprehensive study of recommender systems for the internet of things. In Journal of Physics: Conference Series, vol. 1969, no. 1, pp. 012045, IOP Publishing, 2021, July. 28. Uppal M., Gupta D., Juneja S., Dhiman G., andKautish S.Cloud-based fault prediction using IoT in office automation for improvisation of health of employees.Journal of Healthcare Engineering, 2021. |