Nothing Special   »   [go: up one dir, main page]

skip to main content
10.1145/3109859.3109880acmconferencesArticle/Chapter ViewAbstractPublication PagesrecsysConference Proceedingsconference-collections
research-article

Expediting Exploration by Attribute-to-Feature Mapping for Cold-Start Recommendations

Published: 27 August 2017 Publication History

Abstract

The item cold-start problem is inherent to collaborative filtering (CF) recommenders where items and users are represented by vectors in a latent space. It emerges since CF recommenders rely solely on historical user interactions to characterize their item inventory. As a result, an effective serving of new and trendy items to users may be delayed until enough user feedback is received, thus, reducing both users' and content suppliers' satisfaction. To mitigate this problem, many commercial recommenders apply random exploration and devote a small portion of their traffic to explore new items and gather interactions from random users. Alternatively, content or context information is combined into the CF recommender, resulting in a hybrid system. Another hybrid approach is to learn a mapping between the item attribute space and the CF latent feature space, and use it to characterize the new items providing initial estimates for their latent vectors.
In this paper, we adopt the attribute-to-feature mapping approach to expedite random exploration of new items and present LearnAROMA - an advanced algorithm for learning the mapping, previously proposed in the context of classification. In particular, LearnAROMA learns a Gaussian distribution over the mapping matrix. Numerical evaluation demonstrates that this learning technique achieves more accurate initial estimates than logistic regression methods. We then consider a random exploration setting, in which new items are further explored as user interactions arrive. To leverage the initial latent vector estimates with the incoming interactions, we propose DynamicBPR - an algorithm for updating the new item latent vectors without retraining the CF model. Numerical evaluation reveals that DynamicBPR achieves similar accuracy as a CF model trained on all the ratings, using 71% less exploring users than conventional random exploration.

References

[1]
O. Anava, S. Golan, N. Golbandi, Z. Karnin, R. Lempel, O. Rokhlenko, and O. Somekh. 2015. Budget-constrained item cold-start handling in collaborative filtering recommenders via optimal design. Proc. WWW (2015).
[2]
D. Argawal and B.-C. Chen. 2009. Regression-based Latent Factor Models. Proc. KDD (2009).
[3]
Olivier Chapelle and Lihong Li. 2011. An empirical evaluation of thompson sampling. In Advances in neural information processing systems. 2249--2257.
[4]
K. Crammer and G. Chechik. 2012. Adaptive regularization of weight matrices. Int. Conf. on Machine Learning (2012).
[5]
K. Crammer, A. Kulesza, and M. Dredze. 2009. Adaptive regularization of weight vectors. NIPS (2009).
[6]
D. Drachsler-Cohen, O. Somekh, S. Golan, M. Aharon, O. Anava, and N. Avigdor-Elgrabli. 2015. ExcUseMe: asking users to help in item cold-start recommendations. Proc. RecSys (2015).
[7]
Tom Fawcett. 2006. An introduction to ROC analysis. Pattern recognition letters 27, 8 (2006), 861--874.
[8]
Z. Gantner, L. Drumond, C. Freudenthaler, S. Rendle, and L. Shmidt-Thieme. 2010. Learning Attribute-to-Feature Mappings for Cold-Start Recommendations. ICDM'10: Proceedings of the 10th IEEE international conference on data mining (2010).
[9]
Z. Gantner, S. Rendle, C. Freudenthaler, and L. Shmidt-Thieme. 2011. MyMediaLite: a free recommender system library. Proceeding of the fifth ACM conference on Recommender systems (2011), 305--308.
[10]
A. Gunawardana and C. Meek. 2008. Tied Boltzmann machines for cold starts recommendations. Proc. RecSys (2008).
[11]
A. Gunawardana and C. Meek. 2009. A unified approach to building hybrid recommender systems. Proc. RecSys (2009).
[12]
A. K. Gupta and D. K. Nagar. 1999. Matrix variate distributions. Chapman and Hall/CRC (1999).
[13]
Y. Koren. 2008. Factorization meets the neighborhood: a multifaceted collaborative filtering model. Proc. KDD (2008).
[14]
Y. Koren and R. Bell. 2010. Advances in collaborative filtering. In Recommender systems handbook. Springer, 145--186.
[15]
N. Liu, X. Meng, C. Liu, and Q. Yang. 2011. Wisdom of the better few: cold start recommendation via representative based rating elicitation. Proc. RecSys (2011).
[16]
S.-T. Park and W. Chu. 2009. Pairwise preference regression for cold-start recommendation. Proc. RecSys (2009).
[17]
S.-T. Park, D. Pennock, O. Madani, N. Good, and D. DeCoste. 2006. Naive filterbots for robust cold-start recommendations. KDD'06: Proceedings of the 12th ACM SIGKDD international conference on knowledge discovery and data mining (2006).
[18]
Michael J. Pazzani and Daniel Billsus. 2007. Content-based recommendation systems. In The adaptive web. Springer, 325--341.
[19]
S. Rendle. 2012. Factorization machines with libFM. ACM (2012).
[20]
S. Rendle, C. Freudenthaler, Z. Gantner, and L. Shmidt-Thieme. 2009. BPR: Bayesian personalized ranking from implicit feedback. UAI (2009).
[21]
Steffen Rendle and Lars Schmidt-Thieme. 2008. Online-updating regularized kernel matrix factorization models for large-scale recommender systems. In Proceedings of the 2008 ACM conference on Recommender systems. ACM, 251--258.
[22]
R. Salakhutdinov and A. Mnih. 2008. Probabilistic matrix factorization. NIPS (2008).
[23]
Martin Saveski and Amin Mantrach. 2014. Item cold-start recommendations: learning local collective embeddings. In Proceedings of the 8th ACM Conference on Recommender systems. ACM, 89--96.

Cited By

View all
  • (2024)uTransfer: Unified Transferability Metric Incorporating Heterogeneous User Data in Social NetworkDatabase Systems for Advanced Applications10.1007/978-981-97-5572-1_12(185-202)Online publication date: 31-Aug-2024
  • (2023)Accelerating Creator Audience Building through Centralized ExplorationProceedings of the 17th ACM Conference on Recommender Systems10.1145/3604915.3608880(70-73)Online publication date: 14-Sep-2023
  • (2023)Automatic Fusion Network for Cold-start CVR Prediction with Explicit Multi-Level Representation2023 IEEE 39th International Conference on Data Engineering (ICDE)10.1109/ICDE55515.2023.00264(3440-3452)Online publication date: Apr-2023
  • Show More Cited By

Index Terms

  1. Expediting Exploration by Attribute-to-Feature Mapping for Cold-Start Recommendations

    Recommendations

    Comments

    Please enable JavaScript to view thecomments powered by Disqus.

    Information & Contributors

    Information

    Published In

    cover image ACM Conferences
    RecSys '17: Proceedings of the Eleventh ACM Conference on Recommender Systems
    August 2017
    466 pages
    ISBN:9781450346528
    DOI:10.1145/3109859
    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: 27 August 2017

    Permissions

    Request permissions for this article.

    Check for updates

    Author Tags

    1. collaborative-filtering
    2. item cold-start problem
    3. random exploration
    4. recommendation systems

    Qualifiers

    • Research-article

    Conference

    RecSys '17
    Sponsor:

    Acceptance Rates

    RecSys '17 Paper Acceptance Rate 26 of 125 submissions, 21%;
    Overall Acceptance Rate 254 of 1,295 submissions, 20%

    Contributors

    Other Metrics

    Bibliometrics & Citations

    Bibliometrics

    Article Metrics

    • Downloads (Last 12 months)21
    • Downloads (Last 6 weeks)6
    Reflects downloads up to 16 Nov 2024

    Other Metrics

    Citations

    Cited By

    View all
    • (2024)uTransfer: Unified Transferability Metric Incorporating Heterogeneous User Data in Social NetworkDatabase Systems for Advanced Applications10.1007/978-981-97-5572-1_12(185-202)Online publication date: 31-Aug-2024
    • (2023)Accelerating Creator Audience Building through Centralized ExplorationProceedings of the 17th ACM Conference on Recommender Systems10.1145/3604915.3608880(70-73)Online publication date: 14-Sep-2023
    • (2023)Automatic Fusion Network for Cold-start CVR Prediction with Explicit Multi-Level Representation2023 IEEE 39th International Conference on Data Engineering (ICDE)10.1109/ICDE55515.2023.00264(3440-3452)Online publication date: Apr-2023
    • (2022)A Survey of One Class E-Commerce Recommendation System TechniquesElectronics10.3390/electronics1106087811:6(878)Online publication date: 10-Mar-2022
    • (2022)Discovering Personalized Semantics for Soft Attributes in Recommender Systems using Concept Activation VectorsProceedings of the ACM Web Conference 202210.1145/3485447.3512113(2411-2421)Online publication date: 25-Apr-2022
    • (2022)An Industrial Framework for Cold-Start Recommendation in Zero-Shot ScenariosProceedings of the 45th International ACM SIGIR Conference on Research and Development in Information Retrieval10.1145/3477495.3536332(3403-3407)Online publication date: 6-Jul-2022
    • (2022)A comprehensive social matrix factorization for recommendations with prediction and feedback mechanisms by fusing trust relationships and social tagsSoft Computing10.1007/s00500-022-07440-x26:21(11479-11496)Online publication date: 29-Aug-2022
    • (2021)Dynamic Length Factorization Machines for CTR Prediction2021 IEEE International Conference on Big Data (Big Data)10.1109/BigData52589.2021.9671557(1950-1959)Online publication date: 15-Dec-2021
    • (2021)Improving cold-start recommendations using item-based stereotypesUser Modeling and User-Adapted Interaction10.1007/s11257-021-09293-931:5(867-905)Online publication date: 1-Nov-2021
    • (2020)Persuasion-based recommender system ensambling matrix factorisation and active learning modelsPersonal and Ubiquitous Computing10.1007/s00779-020-01382-728:1(247-257)Online publication date: 12-Mar-2020
    • Show More Cited By

    View Options

    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