Username   Password       Forgot your password?  Forgot your username? 


Personalized Recommendation Strategy and Algorithm Optimization on Cloud Computing Platform

Volume 14, Number 10, October 2018, pp. 2492-2503
DOI: 10.23940/ijpe.18.10.p25.24922503

Xiang Li and Li Wei

School of Software, East China University of Technology, Nanchang, 330013, China

(Submitted on July 8, 2018; Revised on August 12, 2018; Accepted on September 11, 2018)


Information overload is a key issue of the current network information retrieval, and a personalized recommendation with special information filtering methods is an important way and means to solve this problem. Based on the analysis of the common methods used of personalized recommendation, the architectural design of the personalized recommendation is proposed on the cloud computing platform. Then, combined with the specific issues of employment recommendation, this article proposes an optimized algorithm of Mahout distributed personalized recommendation based on content and items. Compared with the current single target recommendation algorithm, this algorithm is more efficient with a good practical significance and reference value.


References: 15

                1. T. S. M. Rao, A. Prasanna, R.V. Singh, B. Rahul, and K. Rahul, “A Review Paper on Recommender Systems to Optimize Search Space and Sparsity in E-Commerce Environment,” International Journal of Applied Engineering Research, Vol. 10, No. 8, pp. 20305-20312, 2015
                2. W. Wang, G. Zhang, and J. Lu, “Collaborative Filtering with Entropy-Driven User Similarity in Recommender Systems,” International Journal of Intelligent Systems, pp. 854-870, 2015
                3. X. Yang, H. Steck, and Y. Liu, “Circle-based Recommendation in Online Social Networks,” in Proceedings of the 18th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp. 1267-1275, 2012
                4. A. Baldominos, Y. Saez, E. Albacete, and I. Marrero, “An Efficient and Scalable Recommender System for the Smart Web,” in Proceedings of IEEE 11th 2015 International Conference on Innovations in Information Technology (IIT), pp. 296-301, 2015
                5. A. Said, “Comparative Recommender System Evaluation: Benchmarking Recommendation Frameworks,” in Proceedings of the 8th ACM Conference on Recommender Systems, pp. 129-136, 2014
                6. S. Taneja and K. Rathi, “A Trust Evaluation Model to Recommend a Service Provider to a Customer in Cloud Environment,” International Journal of Computer Applications, pp. 121, 2015
                7. J. P. Verma, B. Patel, and A. Patel, “Big Data Analysis: Recommendation System with Hadoop Framework,” in Proceedings of IEEE International Conference on Computational Intelligence & Communication Technology (CICT), pp. 92-97, 2015
                8. A. V. Jose and K. M. Jini, “Personalized Movie Recommender System using Rank Boosting Approach on Hadoop,” International Journal for Innovative Research in Science and Technology, Vol. 2, pp. 126-130, 2015
                9. D. K. Bokde, S. Girase, and D. Mukhopadhyay, “An Item-based Collaborative Filtering using Dimensionality Reduction Techniques on Mahout Framework,” CoRR, Vol. abs/1503.06562, 2015
                10. T. S. Kumar and S. Pandey, “Customization of Recommendation System using Collaborative Filtering Algorithm on Cloud using Mahout,” International Journal of Research in Engineering and Technology, Vol. 3, pp. 39-43, 2014
                11. T. Bogers, M. Koolen, and I. Cantádor, “Workshop on New Trends in Content-based Recommender Systems: (CBRecSys 2014),” in Proceedings of the 8th ACM Conference on Recommender Systems, pp. 379-380, 2014
                12. S. Saravanan, “Design of Large-Scale Content-based Recommender System using Hadoop MapReduce framework,” in Proceedings of IEEE 2015 Eighth International Conference on Contemporary Computing (IC3), pp. 302-307, 2015
                13. P. Rodríguez, N. Duque, and D. A. Ovalle, “Multi-agent System for Knowledge-based Recommendation of Learning Objects using Metadata Clustering, Highlights of Practical Applications of Agents, Multi-agent Systems, and Sustainability: The PAAMS Collection,” Springer International Publishing, pp. 356-364, 2015
                14. S. Owen, R. Anil, T. Dunning, and E. Friedman, “Mahout in Action,” Manning Publications Co., 2011
                15. J. Y. Yu, “Design of Distributed Recommendation Engine based on Hadoop and Mahout,” Applied Mechanics & Materials, Vol. 641-642, pp. 1284-1286, 2014


                              Please note : You will need Adobe Acrobat viewer to view the full articles.Get Free Adobe Reader

                              Download this file (IJPE-2018-10-25.pdf)IJPE-2018-10-25.pdf[Personalized Recommendation Strategy and Algorithm Optimization on Cloud Computing Platform]655 Kb
                              This site uses encryption for transmitting your passwords.