Int J Performability Eng ›› 2021, Vol. 17 ›› Issue (12): 1027-1036.doi: 10.23940/ijpe.21.12.p7.10271036
Anuja Aroraa, and Anu Tanejab,*
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* E-mail address: anutaneja16@gmail.com
Anuja Arora, and Anu Taneja. Research Issues, Innovation and Associated Approaches for Recommendation on Social Networks [J]. Int J Performability Eng, 2021, 17(12): 1027-1036.
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1. Adomavicius, G. and Tuzhilin, A., Toward the Next Generation of Recommender Systems: A Survey of the State-of-the-art and Possible Extensions. 2. Konstan, J.A. and Riedl, J., Recommender Systems: From Algorithms to User Experience. 3. Pan, C. and Li, W., Research Paper Recommendation with Topic Analysis. In 4. Sarwar B., Karypis G., Konstan J., andRiedl J., Item-based Collaborative Filtering Recommendation Algorithms. In 5. Moreno M.N., Segrera S., López V.F., Muñoz M.D., andSánchez Á.L., Web Mining Based Framework for Solving Usual Problems in Recommender Systems. A Case Study for Movies? recommendation. 6. Nilashi M., Salahshour M., Ibrahim O., Mardani A., Esfahani M.D., andZakuan N., A New Method for Collaborative Filtering Recommender Systems: The Case of Yahoo! Movies and Tripadvisor Datasets. 7. Davidson J., Liebald B., Liu J., Nandy P., Van Vleet, T., Gargi, U., Gupta, S., He, Y., Lambert, M., Livingston, B., and Sampath, D., The YouTube video recommendation system. In 8. Arora A., Taneja V., Parashar S., andMishra A., Cross-domain Based Event Recommendation using Tensor Factorization. 9. Hyung Z., Lee K., andLee K., Music Recommendation using Text Analysis on Song Requests to Radio Stations. 10. Lika B., Kolomvatsos K., andHadjiefthymiades S., Facing the Cold Start Problem in Recommender Systems. 11. Anand, D. and Bharadwaj, K.K., Utilizing Various Sparsity Measures for Enhancing Accuracy of Collaborative Recommender Systems based on Local and Global Similarities. 12. Adomavicius G., Sankaranarayanan R., Sen S., andTuzhilin A., Incorporating Contextual Information in Recommender Systems using a Multidimensional Approach. 13. Ma H., Zhou T.C., Lyu M.R., andKing I., Improving Recommender Systems by Incorporating Social Contextual Information. 14. Hidasi, B. and Tikk, D., Fast ALS-based tensor factorization for context-aware recommendation from implicit feedback. In 15. Adomavicius G., Manouselis N., andKwon Y., Multi-criteria Recommender Systems. In 16. Figueira J., Greco S., andEhrgott, M. eds., Multiple Criteria Decision Analysis: State of the Art Surveys, 2005. 17. Cantador I.,Fernández-Tobías, I., Berkovsky, S., and Cremonesi, P., Cross-domain Recommender Systems. In 18. Shapira B., Rokach L., andFreilikhman S., Facebook Single and Cross Domain Data for Recommendation Systems. 19. Burke R.,Hybrid Recommender Systems: Survey and Experiments. 20. Cacheda F., Carneiro V., Fernández D., andFormoso V., Comparison of Collaborative Filtering Algorithms: Limitations of Current Techniques and Proposals for Scalable, High-performance Recommender Systems. 21. Kardan, A.A. and Ebrahimi, M., A Novel approach to Hybrid Recommendation Systems based on Association Rules Mining for Content Recommendation in Asynchronous Discussion Groups. 22. Walter F.E., Battiston S., andSchweitzer F., A Model of a Trust-based Recommendation System on a Social Network. 23. Eirinaki M., Louta M.D., andVarlamis I., A Trust-aware System for Personalized User Recommendations in Social Networks. 24. Hong, M. and Jung, J.J., Mymoviehistory: Social Recommender System by Discovering Social Affinities among Users. 25. Ricci F., Rokach L., andShapira B., Introduction to Recommender Systems Handbook. In 26. Guy I.,Social Recommender Systems. In 27. Nikzad-Khasmakhi, N., Balafar, M.A., and Feizi-Derakhshi, M.R., The State-of-the-art in Expert Recommendation Systems. 28. Chen J., Ying P. and Zou M., Improving Music Recommendation by Incorporating Social Influence. 29. Qian Y., Zhang Y., Ma X., Yu H., andPeng L., EARS: Emotion-aware Recommender System based on Hybrid Information Fusion. 30. He, J. and Chu, W.W., A Social Network-based Recommender System (SNRS). In 31. Jeckmans A.J., Beye M., Erkin Z., Hartel P., Lagendijk R.L., andTang Q., Privacy in Recommender Systems. In 32. Bok K., Lee S., Choi D., Lee D., andYoo J., Recommending Personalized Events based on User Preference Analysis in Event based Social Networks. 33. Huang C.L.,Bayesian Recommender System for Social Information Sharing: Incorporating Tag-based Personalized Interest and Social Relationships. 34. Yuan W., He K., Guan D., Zhou L., andLi C., Graph Kernel based Link Prediction for Signed Social Networks. 35. Tang J., Hu X. and Liu H., Social Recommendation: A Review. 36. Resnick P., Iacovou N., Suchak M., Bergstrom P., andRiedl J., Grouplens: An Open Architecture for Collaborative Filtering of Netnews. In 37. Groh, G. and Ehmig, C., Recommendations in Taste Related Domains: Collaborative Filtering VS. Social Filtering. In 38. Chen C., Zeng J., Zheng X., andChen D., Recommender System based on Social Trust Relationships. In 39. Massa, P. and Avesani, P., Trust Metrics in Recommender Systems. In 40. Golbeck J.,Generating Predictive Movie Recommendations from Trust in Social Networks. In 41. Massa, P. and Avesani, P., Trust-aware Recommender Systems. In 42. Jamali, M. and Ester, M., Trustwalker: A Random Walk Model for Combining Trust-based and Item-based Recommendation. In 43. Deng S., Huang L., Xu G., Wu X., andWu Z., On Deep Learning for Trust-aware Recommendations in Social Networks. 44. Wang P., Xu B., Wu Y., andZhou X., Link Prediction in Social Networks: the State-of-the-art. 45. Pandey B., Bhanodia P.K., Khamparia A., andPandey D.K., A Comprehensive Survey of Edge Prediction in Social Networks: Techniques, Parameters and Challenges. 46. Yuan W., He K., Guan D., Zhou L., andLi C., Graph Kernel based Link Prediction for Signed Social Networks. 47. Jamali, M. and Ester, M., A Matrix Factorization Technique with Trust Propagation for Recommendation in Social Networks. In 48. Jamali, M. and Ester, M., A Transitivity Aware Matrix Factorization Model for Recommendation in Social Networks. In 49. Ma H., Yang H., Lyu M.R., andKing I., Sorec: Social Recommendation using Probabilistic Matrix Factorization. In 50. Ma H., King I. and Lyu M.R., Learning to Recommend with Social Trust Ensemble. In 51. Lai C.H., Lee S.J., andHuang H.L., A Social Recommendation Method based on the Integration of Social Relationship and Product Popularity. 52. Lim, H. and Kim, H.J., Item Recommendation using Tag Emotion in Social Cataloging Services. 53. Huang C.L., Yeh P.H., Lin C.W., andWu D.C., Utilizing User Tag-based Interests in Recommender Systems for Social Resource Sharing Websites. 54. Puglisi S.,Parra-Arnau, J., Forné, J., and Rebollo-Monedero, D., On Content-based Recommendation and User Privacy in Social-tagging Systems. 55. Rafailidis, D. and Daras, P., The TFC Model: Tensor Factorization and Tag Clustering for Item Recommendation in Social Tagging Systems. 56. Cantador I., Bellogín A., & Vallet, D. Content-based Recommendation in Social Tagging Systems. In Proceedings of the Fourth ACM Conference on Recommender Systems, pp. 237-240, September 2010. 57. Naeen, H.M. and Jalali, M., A Decentralized Trust-aware Collaborative Filtering Recommender System based on Weighted Items for Social Tagging Systems.arXiv preprint arXiv:1906.05143, 2019. 58. Fan W., Ma Y., Li Q., He Y., Zhao E., Tang J., andYin D., Graph Neural Networks for Social Recommendation. In 59. Gurini D.F., Gasparetti F., Micarelli A. and Sansonetti G., Temporal People-to-people Recommendation on Social Networks with Sentiment-based Matrix Factorization. 60. Liu P., Zhang L., andGulla J.A., Real-time Social Recommendation based on Graph Embedding and Temporal Context. 61. Taneja, A. and Arora, A., Cross Domain Recommendation using Multidimensional Tensor Factorization. 62. Taneja A., Gupta P., Garg A., Bansal A., Grewal K.P., andArora A., Social Graph based Location Recommendation using Users' Behavior: By Locating the Best Route and Dining in Best Restaurant. In |
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