Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
10.1145/2645710.2645772acmconferencesArticle/Chapter ViewAbstractPublication PagesrecsysConference Proceedingsconference-collections
short-paper

Social collaborative filtering for cold-start recommendations

Published: 06 October 2014 Publication History

Abstract

We examine the cold-start recommendation task in an online retail setting for users who have not yet purchased (or interacted in a meaningful way with) any available items but who have granted access to limited side information, such as basic demographic data (gender, age, location) or social network information (Facebook friends or page likes). We formalize neighborhood-based methods for cold-start collaborative filtering in a generalized matrix algebra framework that does not require purchase data for target users when their side information is available. In real-data experiments with 30,000 users who purchased 80,000+ books and had 9,000,000+ Facebook friends and 6,000,000+ page likes, we show that using Facebook page likes for cold-start recommendation yields up to a 3-fold improvement in mean average precision (mAP) and up to 6-fold improvements in Precision@k and Recall@k compared to most-popular-item, demographic, and Facebook friend cold-start recommenders. These results demonstrate the substantial predictive power of social network content, and its significant utility in a challenging problem - recommendation for cold-start users.

References

[1]
R. M. Bell and Y. Koren. Scalable collaborative filtering with jointly derived neighborhood interpolation weights. In ICDM-07, 2007.
[2]
M. Kosinski, D. Stillwell, and T. Graepel. Private traits and attributes are predictable from digital records of human behavior. In PNAS-13, volume 110, 2013.
[3]
K. Lang. NewsWeeder: Learning to filter netnews. In ICML-95, 1995.
[4]
J. Lin, K. Sugiyama, M.-Y. Kan, and T.-S. Chua. Addressing cold-start in app recommendation: Latent user models constructed from twitter followers. In SIGIR-13. 2013.
[5]
H. Ma, H. Yang, M. R. Lyu, and I. King. Sorec: Social recommendation using probabilistic matrix factorization. In CIKM-08, 2008.
[6]
P. Resnick and H. R. Varian. Recommender systems. Communications of the ACM, 40, March 1997.
[7]
B. Sarwar, G. Karypis, J. Konstan, and J. Riedl. Item-based collaborative filtering recommendation algorithms. In WWW-01, 2001.
[8]
S. Sedhain, S. Sanner, L. Xie, R. Kidd, K.-N. Tran, and P. Christen. Social affinity filtering: Recommendation through fine-grained analysis of user interactions and activities. In COSN-13, 2013.
[9]
A. P. Singh and G. J. Gordon. Relational learning via collective matrix factorization. In KDD-08, 2008.
[10]
Y. Zhang and M. Pennacchiotti. Predicting purchase behaviors from social media. In WWW-13, 2013.

Cited By

View all
  • (2024)Predicting Consumer Behavior in E-Commerce Using Recommendation SystemsInternational Journal of Innovative Science and Research Technology (IJISRT)10.38124/ijisrt/IJISRT19SEP1550(806-813)Online publication date: 21-Oct-2024
  • (2024)Prompt Tuning for Item Cold-start RecommendationProceedings of the 18th ACM Conference on Recommender Systems10.1145/3640457.3688126(411-421)Online publication date: 8-Oct-2024
  • (2024)AdaMO: Adaptive Meta-Optimization for cold-start recommendationNeurocomputing10.1016/j.neucom.2024.127417580(127417)Online publication date: May-2024
  • Show More Cited By

Index Terms

  1. Social collaborative filtering for cold-start recommendations

      Recommendations

      Comments

      Information & Contributors

      Information

      Published In

      cover image ACM Conferences
      RecSys '14: Proceedings of the 8th ACM Conference on Recommender systems
      October 2014
      458 pages
      ISBN:9781450326681
      DOI:10.1145/2645710
      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 the author(s) 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: 06 October 2014

      Permissions

      Request permissions for this article.

      Check for updates

      Author Tags

      1. cold-start problem
      2. recommender systems

      Qualifiers

      • Short-paper

      Funding Sources

      Conference

      RecSys'14
      Sponsor:
      RecSys'14: Eighth ACM Conference on Recommender Systems
      October 6 - 10, 2014
      California, Foster City, Silicon Valley, USA

      Acceptance Rates

      RecSys '14 Paper Acceptance Rate 35 of 234 submissions, 15%;
      Overall Acceptance Rate 254 of 1,295 submissions, 20%

      Contributors

      Other Metrics

      Bibliometrics & Citations

      Bibliometrics

      Article Metrics

      • Downloads (Last 12 months)60
      • Downloads (Last 6 weeks)9
      Reflects downloads up to 12 Nov 2024

      Other Metrics

      Citations

      Cited By

      View all
      • (2024)Predicting Consumer Behavior in E-Commerce Using Recommendation SystemsInternational Journal of Innovative Science and Research Technology (IJISRT)10.38124/ijisrt/IJISRT19SEP1550(806-813)Online publication date: 21-Oct-2024
      • (2024)Prompt Tuning for Item Cold-start RecommendationProceedings of the 18th ACM Conference on Recommender Systems10.1145/3640457.3688126(411-421)Online publication date: 8-Oct-2024
      • (2024)AdaMO: Adaptive Meta-Optimization for cold-start recommendationNeurocomputing10.1016/j.neucom.2024.127417580(127417)Online publication date: May-2024
      • (2024)Hierarchical Constrained Variational Autoencoder for interaction-sparse recommendationsInformation Processing & Management10.1016/j.ipm.2024.10364161:3(103641)Online publication date: May-2024
      • (2024)Popularity prediction with semantic retrieval for news recommendationExpert Systems with Applications10.1016/j.eswa.2024.123308(123308)Online publication date: Feb-2024
      • (2023)Addressing the Cold-Start Problem in Recommender Systems Based on Frequent PatternsAlgorithms10.3390/a1604018216:4(182)Online publication date: 27-Mar-2023
      • (2023)Multifaceted Relation-aware Meta-learning with Dual Customization for User Cold-start RecommendationACM Transactions on Knowledge Discovery from Data10.1145/359745817:9(1-27)Online publication date: 18-Jul-2023
      • (2023)Bayesian Knowledge-driven Critiquing with Indirect EvidenceProceedings of the 46th International ACM SIGIR Conference on Research and Development in Information Retrieval10.1145/3539618.3591954(1838-1842)Online publication date: 19-Jul-2023
      • (2023)A Preference Learning Decoupling Framework for User Cold-Start RecommendationProceedings of the 46th International ACM SIGIR Conference on Research and Development in Information Retrieval10.1145/3539618.3591627(1168-1177)Online publication date: 19-Jul-2023
      • (2023)Attention Weighted Mixture of Experts with Contrastive Learning for Personalized Ranking in E-commerce2023 IEEE 39th International Conference on Data Engineering (ICDE)10.1109/ICDE55515.2023.00247(3222-3234)Online publication date: Apr-2023
      • 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