Author : Ankur Chaturevdi 1
Date of Publication :22nd February 2018
Abstract: In an era of information age, recommender system helps users to make an effective decision. Collaborative filtering is one of the techniques to provide a personalized recommendation to users. Collaborative filtering based recommender technique provides the recommendation by aggregating ratings from similar users to predict ratings for an active user (who wants a recommendation). The similarity has a greater impact because it acts as a criterion to identify a group of similar users whose ratings will be merged to generate a recommendation for the new item for an active user. However, there are a lot of issues in Collaborative filtering for e.g. data sparsity and cold start, which can be removed by incorporating trust information. We propose a methodology to include temporal context information in providing accurate rating prediction along with Trust matrix and also propose a framework to analyze the performance of Trust-based recommender algorithms on Film Trust dataset which includes temporal context information.
Reference :
-
- G. Guo, ―A novel recommendation model regularized with user trust and item ratings,‖ IEEE Transaction on Knowledge and Data Engineering, 2016.
- M. Ekstrand, M. Konsten, ―Collaborative filtering recommender systems,‖ in Foundations and Trends® in human-computer interaction, vol. 4, pp. 81—173, 2011.
- G. Guo., J. Zhang. ―A novel Bayesian similarity measure for recommender system,‖ in proceedings of the 23rd International Joint Conference on Artificial Intelligence, pp.1264—1269, 2013.
- B. Yang, Y. Lei, D. Liu, ―Social collaborative filtering by trust,‖ in proceedings of the 23rd International Joint Conference on Artificial Intelligence (IJCAI), pp. 2747—2753, 2013.
- G. Guo, ―Merging trust in recommender systems to alleviate data sparsity and cold start for recommender systems,‖ in proceedings of the 7th ACM Conference on Recommender Systems (RecSys), 2015.
- M. Jamali, M. Easter, ―A Matrix factorization technique with trust propagation in recommender system for social networks,‖ IEEE Transaction on Knowledge and data Engineering, 2013.
- Y. Korean, ―Factor in the neighbors: Scalable and accurate collaborative filtering,‖ ACM Transactions on Knowledge Discovery from Data (TKDD), 2010.
- C.S. Hwang, Y.P Chen, ―Using trust in collaborative filtering recommendation,‖ in New Trends in Applied Artificial Intelligence, pp. 1052—1060, 2007.
- J. O’Donovan, B. Smyth, ―Trust in recommender systems,‖ in: Proceedings of the 10th International Conference on Intelligent User Interfaces, pp.167–174, 2005.
- I. Konstas, V. Stathopoulos, J. Jose, ―On social networks and collaborative recommendation,‖ in proceedings of the 32nd International ACM SIGIR Conference on Research and Development in Information Retrieval, pp. 195–-202, 2009.
- J. Audun, W. Quattrochicchi, ―Taste and trust,‖ in Trust Management V, pp. 312—322, 2011.
- B. Knijnenburg, J. O’Donovan, S. Bostandjiev, A. Kobsa, ―Inspectability and control in social recommenders,‖ in proceedings of the 6th ACM Conference on Recommender Systems, pp. 43—50 2012.
- H. Ma, D. Zhou, C. Liu, ― Recommender systems with social regularization,‖ in proceedings of the 4th ACM International Conference on Web Search and Data Mining (WSDM’11), pp. 287—296, 2011.
- G. Adomavicius, A. Tuzhilin, ―Toward the next generation of recommender systems, A survey of the state-of-the-art and possible extensions,‖ in IEEE Transactions on Knowledge and Data Engineering, vol. 17, no. 6, pp. 734—749, 2005.
- P. Avesani, P. Massa, R. Tiella, ― A Trust-enhanced recommender system Application,‖ in ACM SAC’05, pp. 1589–-1593, 2005.
- G. Adomavicius, A. Tuzhilin, ―Context-Aware Recommender Systems,‖ in Recommender Systems Handbook, pp. 217—256, 2011.
- S. Deng, X. Wu, ―On deep learning for trust aware recommendations,‖ in social networks IEEE transactions on Neural Networks and Learning Systems, vol. 28, pp. 1164—1177, 2016.
- B. Li, X. Zhu, ―Cross-domain Collaborative filtering over time,‖ in proceedings of 22nd International Joint Conference on Artificial Intelligence, vol. 3, pp.2293— 2298, 2011.
- S. Dooms, L. Martens, ―MovieTweetings – A movie Rating dataset collected from Twitter,‖ in CrowdRec, 55th International Symposium, pp. 49--54, IEEE, 2013.