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Exploiting Linked Open Data in Cold-start Recommendations with Positive-only Feedback

Published: 14 June 2016 Publication History

Abstract

In recommender systems, user preferences can be acquired either explicitly by means of ratings, or implicitly --e.g., by processing text reviews, and by mining item browsing and purchasing records. Most existing collaborative filtering approaches have been designed to deal with numerical ratings, such as the 5-star ratings in Amazon and Netflix, for both rating prediction and item ranking (a.k.a. top-N recommendation) tasks. In many e-commerce and social network sites, however, user preferences are usually expressed in the form of binary and unary (positive-only) ratings, such as the thumbs up/down in YouTube and the likes in Facebook, respectively. Moreover, in these cases, the well-known problem of cold-start --i.e., the scarcity of user preferences-- is highly remarkable. To address this situation, we explore a number of graph-based and matrix factorization recommendation models that jointly exploit user ratings and item metadata. In this work, such metadata are automatically obtained from DBpedia --the queriable and structured version of Wikipedia which is considered as the core knowledge repository of the Linked Open Data initiative--, and the models are evaluated with a Facebook dataset covering three distinct domains, namely books, movies and music. The results achieved in our experiments show that the proposed hybrid recommendation models, which exploit rating and semantic data, outperform content-based and collaborative filtering baselines.

References

[1]
Adomavicius, G., Kwon, Y. 2012. Improving aggregate recommendation diversity using ranking-based techniques. IEEE Transactions on Knowledge and Data Engineering, 24(5), 896--911.
[2]
Auer, S., Bizer, C., Kobilarov, G., Lehmann, J., Cyganiak, R., Ives, Z. 2007. DBpedia: A Nucleus for a Web of Open Data. 6th International Semantic Web Conference, 722--735.
[3]
Bellogin, A., Castells, P., and Cantador, I. 2011, Precision-oriented evaluation of recommender systems: An algorithmic comparison. 5th ACM Conference on Recommender Systems, 333--336.
[4]
Bizer, C., Heath, T., Berners-Lee, T. 2009. Linked Data - The Story So Far. Journal on Semantic Web and Information Systems 5(3), 1--22.
[5]
Cantador, I., Fernández-Tobías, I., Berkovsky, S., Cremonesi, P. 2015. Cross-Domain Recommender Systems. Recommender Systems Handbook (2nd edition), 919--959.
[6]
Di Noia, T., Ostuni, V.C., Rosati, J., Tomeo, P., Di Sciascio, E. 2014. An Analysis of Users' Propensity toward Diversity in Recommendations. 8th ACM Conference on Recommender Systems. 285--288.
[7]
Di Noia, T., Ostuni, V.C., Tomeo, P., Di Sciascio, E. 2016. SPRank: Semantic Path-based Ranking for Top-N Recommendations using Linked Open Data. ACM TIST (to appear), 30 pages.
[8]
Enrich, M., Braunhofer, M., Ricci, F. 2013. Cold-Start Management with Cross-Domain Collaborative Filtering and Tags. 14th Intl. Conference on E-Commerce and Web Technologies, 101--112.
[9]
Fernández-Tobías, I., Braunhofer, M., Elahi, M., Ricci, F., Cantador, I. 2016. Alleviating the New User Problem in Collaborative Filtering by Exploiting Personality Information. In UMUAI (to appear), 35 pages.
[10]
Funk, S. 2006. Netflix Update: Try This At Home. http://sifter.org/~simon/journal/20061211.html
[11]
Hu, Y., Koren, Y., Volinsky, C. 2008. Collaborative Filtering for Implicit Feed-back Datasets. 8th IEEE Conference on Data Mining, 263--272.
[12]
Kluver, D., Konstan, J.A. 2014. Evaluating Recommender Behavior for New Users. 8th ACM Conference on Recommender Systems, 121--128.
[13]
Koren, Y. 2008. Factorization Meets the Neighborhood: A Multifaceted Collaborative Filtering Model. 14th ACM Conference on Knowledge Discovery and Data Mining, 426--434.
[14]
Koren, Y., Bell, R. 2011. Advances in Collaborative Filtering. Recommender Systems Handbook, 145--186.
[15]
Lee, S., Park, S., Kahng, M., Goo Lee, S. 2012. PathRank: A Novel Node Ranking Measure on a Heterogeneous Graph for Recommender Systems. 21st ACM Conf. on Information and Knowledge Management, 1637--1641.
[16]
Ning, X., Karypis, G., 2011. Slim: Sparse Linear methods for top-n recommender systems. ICDM, 497--506.
[17]
Ning, X., Karypis, G., 2012. Sparse Linear methods with Side Information for Top-N recommender systems. ACM RecSys 2012, 155--162.
[18]
Singh, A. P., Gordon, G. J. 2008. Relational Learning Via Collective Matrix Factorization. 14th ACM Conference on Knowledge Discovery and Data Mining, 650--658.
[19]
Shi, C., Kong, X., Huang, Y., Philip, S.Y., Wu, B. 2013. HeteSim: A General Framework for Relevance Measure in Heterogeneous Networks. IEEE Trans. on Knowledge and Data Engineering 26(10), 2479--2492.
[20]
Shi, Y., Karatzoglou, A., Baltrunas, L., Larson, M., Oliver, N., Hanjalic, A. 2012. CLiMF: Learning to Maximize Reciprocal Rank with Collaborative Less-is-more Filtering. ACM RecSys 2012, 139--146.
[21]
Shi, Y., Larson, M., Hanjalic, A. 2014. Collaborative Filtering beyond the User-Item Matrix: A Survey of the State of the Art and Future Challenges. Journal ACM Computing Surveys 47(1), No. 3.
[22]
Rendle, S. 2010. Factorization Machines. 10th IEEE International Conference on Data Mining, 995--1000.
[23]
Sun, Y., Han, J., Yan, X., Yu, P. S., Wu, T. 2011. PathSim: Meta Path-Based Top-K Similarity Search in Heterogeneous Information Networks. 2011 Conference on Very Large Database Endowment, 992--1003.
[24]
Yu, X., Ren, X., Sun, Y., Gu, Q., Sturt, B., Khandewal, U., Norick, B., Han, J. 2014. Personalized Entity Recommendation: A Heterogeneous Information Network Approach. 7th ACM Conference on Web Search and Data Mining, 283--292.

Cited By

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  • (2023)Design of a trust system for e-commerce platforms based on quality dimensions for linked open datasetsJournal of Information Systems Engineering and Management10.55267/iadt.07.127418:1(18756)Online publication date: 2023
  • (2021)Eliciting Auxiliary Information for Cold Start User Recommendation: A SurveyApplied Sciences10.3390/app1120960811:20(9608)Online publication date: 15-Oct-2021
  • (2020)Addressing the Cold-Start Problem Using Data Mining Techniques and Improving Recommender Systems by Cuckoo Algorithm: A Case Study of FacebookComputing in Science and Engineering10.1109/MCSE.2018.287532122:4(62-73)Online publication date: 18-Jun-2020
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  1. Exploiting Linked Open Data in Cold-start Recommendations with Positive-only Feedback

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    cover image ACM Other conferences
    CERI '16: Proceedings of the 4th Spanish Conference on Information Retrieval
    June 2016
    146 pages
    ISBN:9781450341417
    DOI:10.1145/2934732
    Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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    • University of Granada: University of Granada

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    New York, NY, United States

    Publication History

    Published: 14 June 2016

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    Author Tags

    1. DBpedia
    2. Facebook
    3. Linked Data
    4. Recommender systems
    5. cold-start
    6. hybrid recommendation
    7. positive-only feedback

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    • Research-article
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    • Refereed limited

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    CERI '16 Paper Acceptance Rate 18 of 27 submissions, 67%;
    Overall Acceptance Rate 36 of 51 submissions, 71%

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    Cited By

    View all
    • (2023)Design of a trust system for e-commerce platforms based on quality dimensions for linked open datasetsJournal of Information Systems Engineering and Management10.55267/iadt.07.127418:1(18756)Online publication date: 2023
    • (2021)Eliciting Auxiliary Information for Cold Start User Recommendation: A SurveyApplied Sciences10.3390/app1120960811:20(9608)Online publication date: 15-Oct-2021
    • (2020)Addressing the Cold-Start Problem Using Data Mining Techniques and Improving Recommender Systems by Cuckoo Algorithm: A Case Study of FacebookComputing in Science and Engineering10.1109/MCSE.2018.287532122:4(62-73)Online publication date: 18-Jun-2020
    • (2018)Favorite Video Estimation Based on Multiview Feature Integration via KMvLFDAIEEE Access10.1109/ACCESS.2018.28761626(63833-63842)Online publication date: 2018
    • (2018)A Semantic Use Case Simulation Framework for Training Machine Learning AlgorithmsKnowledge Engineering and Knowledge Management10.1007/978-3-030-03667-6_16(243-257)Online publication date: 31-Oct-2018
    • (2018)Computing User Similarity by Combining Item Ratings and Background Knowledge from Linked Open DataWeb Information Systems and Applications10.1007/978-3-030-02934-0_43(467-478)Online publication date: 20-Nov-2018
    • (2018)Recommender Systems Based on Linked Open DataEncyclopedia of Social Network Analysis and Mining10.1007/978-1-4939-7131-2_110165(2064-2080)Online publication date: 12-Jun-2018
    • (2017)Recommender Systems Based on Linked Open DataEncyclopedia of Social Network Analysis and Mining10.1007/978-1-4614-7163-9_110165-1(1-17)Online publication date: 19-Jul-2017
    • (2016)Accuracy and Diversity in Cross-domain Recommendations for Cold-start Users with Positive-only FeedbackProceedings of the 10th ACM Conference on Recommender Systems10.1145/2959100.2959175(119-122)Online publication date: 7-Sep-2016

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