Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
10.1145/2792838.2800183acmconferencesArticle/Chapter ViewAbstractPublication PagesrecsysConference Proceedingsconference-collections
research-article

ExcUseMe: Asking Users to Help in Item Cold-Start Recommendations

Published: 16 September 2015 Publication History

Abstract

The item cold-start problem is of a great importance in collaborative filtering (CF) recommendation systems. It arises when new items are added to the inventory and the system cannot model them properly since it relies solely on historical users' interactions (e.g., ratings). Much work has been devoted to mitigate this problem mostly by employing hybrid approaches that combine content-based recommendation techniques or by devoting a portion of the user traffic for exploration to gather interactions from random users. We focus on pure CF recommender systems (i.e., without content or context information) in a realistic online setting, where random exploration is inefficient and smart exploration that carefully selects users is crucial due to the huge flux of new items with short lifespan. We further assume that users arrive randomly one after the other and that the system has to immediately decide whether the arriving user will participate in the exploration of the new items.
For this setting we present ExcUseMe, a smart exploration algorithm that selects a predefined number of users for exploring new items. ExcUseMe gradually excavates the users that are more likely to be interested in the new items and models the new items based on the users' interactions. We evaluated ExcUseMe on several datasets and scenarios and compared it to state-of-the-art algorithms. Experimental results indicate that ExcUseMe is an efficient algorithm that outperforms all other algorithms in all tested scenarios.

Supplementary Material

MP4 File (p83.mp4)

References

[1]
D. Agarwal and B.-C. Chen. Regression-based latent factor models. In KDD '09.
[2]
M. Aharon, A. Kagian, Y. Koren, and R. Lempel. Dynamic personalized recommendation of comment-eliciting stories. In RecSys '12.
[3]
N. Aizenberg, Y. Koren, and O. Somekh. Build your own music recommender by modeling internet radio streams. In WWW '12.
[4]
O. Anava, S. Golan, N. Golbandi, Z. Karnin, R. Lempel, O. Rokhlenko, and O. Somekh. Budget-constrained item cold-start handling in collaborative filtering recommenders via optimal design. In WWW '15.
[5]
M. Bateni, M. Hajiaghayi, and M. Zadimoghaddam. Submodular secretary problem and extensions. ACM Trans. Algorithms, 9(4), 2013.
[6]
G. Dror, N. Koenigstein, and Y. Koren. Yahoo! music recommendations: Modeling music ratings with temporal dynamics and item. In RecSys '11.
[7]
J. C. Duchi, E. Hazan, and Y. Singer. Adaptive subgradient methods for online learning and stochastic optimization. Journal of Machine Learning Research, 12, 2011.
[8]
M. Feldman, J. Naor, and R. Schwartz. Improved competitive ratios for submodular secretary problems (extended abstract). In APPROX-RANDOM '11.
[9]
N. Golbandi, Y. Koren, and R. Lempel. Adaptive bootstrapping of recommender systems using decision trees. In WSDM '11.
[10]
N. Golbandi, Y. Koren, and R. Lempel. On bootstrapping recommender systems. In CIKM '10.
[11]
A. Gunawardana and C. Meek. Tied boltzmann machines for cold start recommendations. In RecSys '08.
[12]
A. Gunawardana and C. Meek. A unified approach to building hybrid recommender systems. In RecSys '09.
[13]
A. Gupta, A. Roth, G. Schoenebeck, and K. Talwar. Constrained non-monotone submodular maximization: Offline and secretary algorithms. In WINE '10.
[14]
A. Kohrs and B. Mérialdo. Improving collaborative filtering for new-users by smart object selection. In ICME '01.
[15]
Y. Koren. Factorization meets the neighborhood: a multifaceted collaborative filtering model. In KDD '08.
[16]
Y. Koren. Collaborative filtering with temporal dynamics. Commun. of the ACM, 53(4), 2010.
[17]
Y. Koren, R. M. Bell, and C. Volinsky. Matrix factorization techniques for recommender systems. Computer, 42(8), 2009.
[18]
S.-L. Lee. Commodity recommendations of retail business based on decision tree induction. Expert Systems with Applications, 37(5), 2010.
[19]
G. Linden, B. Smith, and J. York. Amazon. com recommendations: Item-to-item collaborative filtering. Internet Computing, IEEE, 7(1), 2003.
[20]
P. McCullagh and J. A. Nelder. Generalized linear models (Second edition). 1989.
[21]
S.-T. Park and W. Chu. Pairwise preference regression for cold-start recommendation. In RecSys '09.
[22]
A. Paterek. Improving regularized singular value decomposition for collaborative filtering. In KDD '07.
[23]
M. J. Pazzani and D. Billsus. Content-based recommendation systems. The Adaptive Web, 4321, 2007.
[24]
A. M. Rashid, I. Albert, D. Cosley, S. K. Lam, S. M. McNee, J. A. Konstan, and J. Riedl. Getting to know you: Learning new user preferences in recommender systems. In IUI '02.
[25]
A. M. Rashid, G. Karypis, and J. Riedl. Learning preferences of new users in recommender systems: an information theoretic approach. SIGKDD Explor. Newsl., 10(2), 2008.
[26]
B. Sarwar, G. Karypis, J. Konstan, and J. Riedl. Item-based collaborative filtering recommendation algorithms. In WWW '01.
[27]
G. Takacs, I. Pilaszy, B. Nemeth, and D. Tikk. Investigation of various matrix factorization methods for large recommender systems. In ICDMW '08.

Cited By

View all
  • (2024)Long-Term Value of Exploration: Measurements, Findings and AlgorithmsProceedings of the 17th ACM International Conference on Web Search and Data Mining10.1145/3616855.3635833(636-644)Online publication date: 4-Mar-2024
  • (2023)Intent Disentanglement and Feature Self-Supervision for Novel RecommendationIEEE Transactions on Knowledge and Data Engineering10.1109/TKDE.2022.317553635:10(9864-9877)Online publication date: 1-Oct-2023
  • (2022)A Machine Learning Approach for Solving the Frozen User Cold-Start Problem in Personalized Mobile Advertising SystemsAlgorithms10.3390/a1503007215:3(72)Online publication date: 22-Feb-2022
  • Show More Cited By

Index Terms

  1. ExcUseMe: Asking Users to Help in Item Cold-Start Recommendations

    Recommendations

    Comments

    Information & Contributors

    Information

    Published In

    cover image ACM Conferences
    RecSys '15: Proceedings of the 9th ACM Conference on Recommender Systems
    September 2015
    414 pages
    ISBN:9781450336925
    DOI:10.1145/2792838
    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]

    Sponsors

    In-Cooperation

    Publisher

    Association for Computing Machinery

    New York, NY, United States

    Publication History

    Published: 16 September 2015

    Permissions

    Request permissions for this article.

    Check for updates

    Author Tags

    1. collaborative filtering
    2. item cold-start
    3. online algorithms

    Qualifiers

    • Research-article

    Conference

    RecSys '15
    Sponsor:
    RecSys '15: Ninth ACM Conference on Recommender Systems
    September 16 - 20, 2015
    Vienna, Austria

    Acceptance Rates

    RecSys '15 Paper Acceptance Rate 28 of 131 submissions, 21%;
    Overall Acceptance Rate 254 of 1,295 submissions, 20%

    Upcoming Conference

    RecSys '24
    18th ACM Conference on Recommender Systems
    October 14 - 18, 2024
    Bari , Italy

    Contributors

    Other Metrics

    Bibliometrics & Citations

    Bibliometrics

    Article Metrics

    • Downloads (Last 12 months)10
    • Downloads (Last 6 weeks)1
    Reflects downloads up to 30 Aug 2024

    Other Metrics

    Citations

    Cited By

    View all
    • (2024)Long-Term Value of Exploration: Measurements, Findings and AlgorithmsProceedings of the 17th ACM International Conference on Web Search and Data Mining10.1145/3616855.3635833(636-644)Online publication date: 4-Mar-2024
    • (2023)Intent Disentanglement and Feature Self-Supervision for Novel RecommendationIEEE Transactions on Knowledge and Data Engineering10.1109/TKDE.2022.317553635:10(9864-9877)Online publication date: 1-Oct-2023
    • (2022)A Machine Learning Approach for Solving the Frozen User Cold-Start Problem in Personalized Mobile Advertising SystemsAlgorithms10.3390/a1503007215:3(72)Online publication date: 22-Feb-2022
    • (2022)Attribute Graph Neural Networks for Strict Cold Start RecommendationIEEE Transactions on Knowledge and Data Engineering10.1109/TKDE.2020.303823434:8(3597-3610)Online publication date: 1-Aug-2022
    • (2021)ATNN: Adversarial Two-Tower Neural Network for New Item’s Popularity Prediction in E-commerce2021 IEEE 37th International Conference on Data Engineering (ICDE)10.1109/ICDE51399.2021.00282(2499-2510)Online publication date: Apr-2021
    • (2020)Tackling Cannibalization Problems for Online AdvertisementProceedings of the 28th ACM Conference on User Modeling, Adaptation and Personalization10.1145/3340631.3394875(358-362)Online publication date: 7-Jul-2020
    • (2020)Explainable Outfit Recommendation with Joint Outfit Matching and Comment GenerationIEEE Transactions on Knowledge and Data Engineering10.1109/TKDE.2019.290619032:8(1502-1516)Online publication date: 1-Aug-2020
    • (2020)Addressing the Item Cold-Start Problem by Attribute-Driven Active LearningIEEE Transactions on Knowledge and Data Engineering10.1109/TKDE.2019.289153032:4(631-644)Online publication date: 1-Apr-2020
    • (2020)Calibrated Web Personalization with Adaptive Recurrent Computing2020 IEEE 14th International Conference on Semantic Computing (ICSC)10.1109/ICSC.2020.00009(9-16)Online publication date: Feb-2020
    • (2020)Simple and effective neural-free soft-cluster embeddings for item cold-start recommendationsData Mining and Knowledge Discovery10.1007/s10618-020-00708-6Online publication date: 3-Aug-2020
    • Show More Cited By

    View Options

    Get Access

    Login options

    View options

    PDF

    View or Download as a PDF file.

    PDF

    eReader

    View online with eReader.

    eReader

    Media

    Figures

    Other

    Tables

    Share

    Share

    Share this Publication link

    Share on social media