A Model- Based Research Material Recommendation System For Individual Users
DOI:
https://doi.org/10.14738/tmlai.52.2842Keywords:
Data Extraction, Text Classification, Profile Learning, Recommendation, Information ExtractionAbstract
As there is an enormous amount of online research material available, finding pertinent information for specific purposes has become a tedious chore. So there is a requirement of the research paper recommendation system to facilitate research scholars in finding their interested and relevant research papers. There are many paper recommendation systems available, most of them are depending on paper assemblage, references, user profile, mind maps. This information is generally not easily available. The majority of the prevailing recommender system is based on collaborative filtering that rely on other user’s proclivity. On the other hand, content-based methods use information regarding an item itself to make a recommendation. In this paper, we present a research paper recommendation method that is based on single paper. Our method uses content-based recommendation approach that employs information extraction and text categorization. . It performs the profile learning by using naive Bayesian text classifier and generates recommendation on the basis of an individual’s preference.
References
(1) Y. Liang, Q. Li and T. Qian, “Finding Relevant Papers Based on Citation Relations”, Springer-Verlag Berlin Heidelberg, (2011), pp. 403–414.
(2) K. W. Hong, H. Jeon and C. Jeon, “User Profile-Based Personalized Research Paper Recommendation System”, 8th International Conference on Computing and Networking Technology (ICCNT), IEEE (2012), pp. 134-138.
(3) K. Sugiyama and M.-Y.Kan, “Scholarly Paper Recommendation via User’s Recent Research Interests”,In Proc. of the 10th ACM/IEEE Joint Conference on Digital Libraries ,(2010), pp. 29–38.
(4) C. Wang and D. M. Blei, “Collaborative Topic Modeling for Recommending Scientific Articles”, In Proc. of the 17th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining,(2011), pp. 448–456.
(5) C. Nascimento, A. H. F. Laender, A. S. da Silva and M. A. Gonçalves, “A Source Independent Framework for Research Paper Recommendation”.ACM, (2011) June 13–17, Ottawa, Ontario, Canada.
(6) M. Balabanovic and Y. Shoham. Fab: Content-based, collaborative recommendation. Communications of the Association for Computing Machinery, 40(3)”66”72,1997.
(7) M. Pazzani, J. Muramatsu, and D. Billsus.Syskill& Webert: Identifying interesting web sites. In Proceedings of the Thirteenth National Conference on Artificial Intelligence, pages 54”61, Portland, OR, August 1996.
(8) K. Lang. NewsWeeder: Learning to iternet news. In Proceedings of the Twelfth International Conference on Machine Learning, pages 331{339, San Francisco, CA,1995. Morgan Kaufman.
(9) G. Adomavicius, and A. Tuzhilin. "Toward the next generation of recommender systems: A survey of the state-of-the-art and possible extensions." Knowledge and Data Engineering, IEEE Transactions on 17, no. 6 (2005): 734-749.
(10) M.J. Pazzani and D. Billsus, “Content-based recommendation systems”, in: P. Brusilovsky, A. Kobsa, W. Nejdl (Eds.), The Adaptive Web, Lecture Notes in Computer Science, vol. 4321, Springer-Verlag, 2007, pp. 325–341.
(11) Wendy Lehnert and Beth Sundheim. A performance evaluation of text-analysis technologies. AI Magazine, 12(3),81-94, 1991.
(12) DARPA, editor. Proceedings of the 6th Message Understanding Conference, San Mateo, CA, 1995. Morgan Kaufman
(13) N. Kushmerick, K. Weld, and R. Doorenbos. Wrapper induction for information extraction. In Proceedings of the Fifteenth International Joint Conference on Artificial Intelligence, pages 729{735, Nagoya, Japan, 1997.
(14) M. E. Cali_ and R. J. Mooney. Relational learning of pattern-match rules for information extraction. In Proceedings of the Sixteenth National Conference on Articial Intelligence, Orlando, FL, July 1999.
(15) T. Mitchell. Machine Learning. McGraw-Hill, New York, NY, 1997.
(16) T. Joachims. A probabilistic analysis of the Rocchio algorithm with TFIDF for text categorization. In Proceedings of the Fourteenth International Conference on Machine Learning, pages 143{151, San Francisco, CA, 1997. Morgan Kaufman.
(17) A. McCallum and K. Nigam. A comparison of event models for naive Bayes text classi_cation. In Papers from the AAAI 1998 Workshop on Text Categorization, pages 41{48, Madison, WI, 1998.
(18) J.L. Herlocker, J.A, Konstan, L.G. Terveen, and J. Riedl, “Evaluating Collaborative Filtering Recommender Systems,” ACM Transactions on Information Systems, 22(1), pp. 5-53, 2004.
(19) J. Beel, B. Gipp, S, Langer, and M. Genzmehr, “Docear: An Academic Literature Suite for Searching, Organizing and Creating Academic Literature”, Proceedings of the 11th annual international ACM/IEEE joint conference on Digital libraries (2011), 465–466.
(20) J. Beel, S. Langer, M. Genzmehr, and A. Nürnberger, “Introducing Docear's research paper recommender system”, Proceedings of the 13th ACM/IEEE-CS joint conference, (JCDL '13), 2013, pp.459-460.
(21) J. Lee, K. Lee, and J. G. Kim, "Personalized Academic Research Paper Recommendation System.", arXiv preprint arXiv:1304.5457(2013).
(22) P. Lakkaraju, S. Gauch, and M. Speretta, "Document similarity based on concept tree distance.", Proceedings of the nineteenth ACM conference on Hypertext and hypermedia. ACM, 2008, pp. 127-132
(23) B. Gipp, J. Beel, and C. Hentschel, “Scienstein: A Research Paper Recommender System”, In Proceedings of the International Conference on Emerging Trends in Computing (ICETiC’09), Virudhunagar (India), January 2009, pp. 309–315.
(24) Nikhat Akhtar, Prof. (Dr.) Devendera Agarwal, “A Literature Review of Empirical Studies of Recommendation Systems” International Journal of Applied Information Systems (IJAIS) USA , Volume 10, No. 2, Pages 6 – 14, December 2015, ISSN 2249 - 0868, DOI : 10.5120/ijais2015451467.
(25) J. Sadiku and M. Biba, “Automatic Stemming of Albanian Through a Rule-based Approach”, Journal of International Research Publications: Language, Individuals and Society, Vol. 6, 2012.