Movie recommender systems using hybrid model based on graphs with co-rated, genre, and closed caption features
DOI:
https://doi.org/10.26594/register.v7i1.2081Keywords:
closed caption, hybrid recommender system, movies, neo4j graph databaseAbstract
A movie recommendation is a long-standing challenge. Figuring out the viewer’s interest in movies is still a problem since a huge number of movies are released in no time. In the meantime, people cannot enjoy all available new releases or unseen movies due to their limited time. They also still need to choose which movies to watch when they have spare time. This situation is not good for the movie business too. In order to satisfy people in choosing what movies to watch and to boost movie sales, a system that can recommend suitable movies is required, either unseen in the past or new releases. This paper focuses on the hybrid approach, a combination of content-based and collaborative filtering, using a graph-based model. This hybrid approach is proposed to overcome the drawbacks of combination in the content-based and collaborative filtering. The graph database, Neo4j is used to store the collaborative features, such as movies with its genres, and ratings. Since the movie’s closed caption is rarely considered to be used in a recommendation, the proposed method evaluates the impact of using this syntactic feature. From the early test, the combination of collaborative filtering and content-based using closed caption gives a slightly better result than without closed caption, especially in finding similar movies such as sequel or prequel.References
D. Jannach, M. Zanker, A. Felfernig and G. Friedrich, Recommender Systems: An Introduction, New York: Cambridge University Press, 2011.
G. Adomavicius and A. Tuzhilin, "Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions," IEEE Transactions on Knowledge and Data Engineering, vol. 17, no. 6, pp. 734-749, 2005.
S. M. Ali, G. K. Nayak, R. K. Lenka and R. K. Barik, "Movie Recommendation System Using Genome Tags and Content-Based Filtering," in Advances in Data and Information Sciences, Singapore, 2018.
N. Mustafa, A. O. Ibrahim, A. Ahmed and A. Abdullah, "Collaborative filtering: Techniques and applications," in International Conference on Communication, Control, Computing and Electronics Engineering (ICCCCEE), Khartoum, 2017.
R. Zhang, Q.-d. Liu, Chun-Gui, J.-X. Wei and Huiyi-Ma, "Collaborative Filtering for Recommender Systems," in Second International Conference on Advanced Cloud and Big Data, Huangshan, 2014.
T. Zhou, L. Chen and J. Shen, "Movie Recommendation System Employing the User-Based CF in Cloud Computing," in 2017 IEEE International Conference on Computational Science and Engineering (CSE) and IEEE International Conference on Embedded and Ubiquitous Computing (EUC), Guangzhou, 2017.
J. Lu, D. Wu, M. Mao, W. Wang and G. Zhang, "Recommender system application developments: A survey," Decision Support Systems, vol. 74, pp. 12-32, 2015.
Z. Huang, W. Chung, T.-H. Ong and H. Chen, "A graph-based recommender system for digital library," in Proceedings of the 2nd ACM/IEEE-CS joint conference on Digital libraries (JCDL '02), New York, 2002.
K. Lee and K. Lee, "Escaping your comfort zone: A graph-based recommender system for finding novel recommendations among relevant items," Expert Systems with Applications, vol. 42, no. 10, pp. 4851-4858, 2015.
S. Wei, X. Zheng, D. Chen and C. Chen, "A hybrid approach for movie recommendation via tags and ratings," Electronic Commerce Research and Applications, vol. 18, pp. 83-94, 2016.
G. Tüysüzoğlu and Z. Işık, "A Hybrid Movie Recommendation System Using Graph-Based Approach," International Journal of Computing Academic Research (IJCAR), vol. 7, no. 2, pp. 29-37, 2018.
M. Shah, D. Parikh and B. Deshpande, "Movie Recommendation System Employing Latent Graph Features in Extremely Randomized Trees," in Proceedings of the Second International Conference on Information and Communication Technology for Competitive Strategies (ICTCS '16), New York, 2016.
Y. Deldjoo, M. Elahi, M. Quadrana and P. Cremonesi, "Using visual features based on MPEG-7 and deep learning for movie recommendation," Int J Multimed Info Retr, vol. 7, p. 207–219, 2018.
J. K. Leung, I. Griva and W. G. Kennedy, "Making Use of Affective Features from Media Content Metadata for Better Movie Recommendation Making," arXiv, 2020.
S. Reddy, S. Nalluri, S. Kunisetti, S. Ashok and B. Venkatesh, "Content-Based Movie Recommendation System Using Genre Correlation," in Smart Intelligent Computing and Applications, Singapore, 2019.
H. Li, J. Cui, B. Shen and J. Ma, "An intelligent movie recommendation system through group-level sentiment analysis in microblogs," Neurocomputing, vol. 210, pp. 164-173, 2016.
O.-J. Lee and J. J. Jung, "Explainable Movie Recommendation Systems by using Story-based Similarity," in Explainable Smart Systems 2018 (ExSS ’18), Tokyo, 2018.
J. Li, W. Xu, W. Wan and J. Sun, "Movie recommendation based on bridging movie feature and user interest," Journal of Computational Science, vol. 26, pp. 128-134, 2018.
W. E. Winkler, "String Comparator Metrics and Enhanced Decision Rules in the Fellegi-Sunter Model of Record Linkage," The Educational Resources Information Center (ERIC), Washington, DC, 1990.
C. D. Manning, P. Raghavan and H. Schütze, An Introduction to Information Retrieval, Cambridge: Cambridge University Press, 2008.
A. Vukotic, N. Watt, T. Abedrabbo, D. Fox and J. Partner, Neo4j in Action, Greenwich, CT, United States: Manning Publications Co, 2014.
Downloads
Published
How to Cite
Issue
Section
License
Please find the rights and licenses in Register: Jurnal Ilmiah Teknologi Sistem Informasi. By submitting the article/manuscript of the article, the author(s) agree with this policy. No specific document sign-off is required.
1. License
The non-commercial use of the article will be governed by the Creative Commons Attribution license as currently displayed on Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
2. Author(s)' Warranties
The author warrants that the article is original, written by stated author(s), has not been published before, contains no unlawful statements, does not infringe the rights of others, is subject to copyright that is vested exclusively in the author and free of any third party rights, and that any necessary written permissions to quote from other sources have been obtained by the author(s).
3. User/Public Rights
Register's spirit is to disseminate articles published are as free as possible. Under the Creative Commons license, Register permits users to copy, distribute, display, and perform the work for non-commercial purposes only. Users will also need to attribute authors and Register on distributing works in the journal and other media of publications. Unless otherwise stated, the authors are public entities as soon as their articles got published.
4. Rights of Authors
Authors retain all their rights to the published works, such as (but not limited to) the following rights;
Copyright and other proprietary rights relating to the article, such as patent rights,
The right to use the substance of the article in own future works, including lectures and books,
The right to reproduce the article for own purposes,
The right to self-archive the article (please read out deposit policy),
The right to enter into separate, additional contractual arrangements for the non-exclusive distribution of the article's published version (e.g., post it to an institutional repository or publish it in a book), with an acknowledgment of its initial publication in this journal (Register: Jurnal Ilmiah Teknologi Sistem Informasi).
5. Co-Authorship
If the article was jointly prepared by more than one author, any authors submitting the manuscript warrants that he/she has been authorized by all co-authors to be agreed on this copyright and license notice (agreement) on their behalf, and agrees to inform his/her co-authors of the terms of this policy. Register will not be held liable for anything that may arise due to the author(s) internal dispute. Register will only communicate with the corresponding author.
6. Royalties
Being an open accessed journal and disseminating articles for free under the Creative Commons license term mentioned, author(s) aware that Register entitles the author(s) to no royalties or other fees.
7. Miscellaneous
Register will publish the article (or have it published) in the journal if the article’s editorial process is successfully completed. Register's editors may modify the article to a style of punctuation, spelling, capitalization, referencing and usage that deems appropriate. The author acknowledges that the article may be published so that it will be publicly accessible and such access will be free of charge for the readers as mentioned in point 3.