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

skip to main content
10.1145/3442381.3450027acmconferencesArticle/Chapter ViewAbstractPublication PagesthewebconfConference Proceedingsconference-collections
research-article

Density-Ratio Based Personalised Ranking from Implicit Feedback

Published: 03 June 2021 Publication History

Abstract

Learning from implicit user feedback is challenging as we can only observe positive samples but never access negative ones. Most conventional methods cope with this issue by adopting a pairwise ranking approach with negative sampling. However, the pairwise ranking approach has a severe disadvantage in the convergence time owing to the quadratically increasing computational cost with respect to the sample size; it is problematic, particularly for large-scale datasets and complex models such as neural networks. By contrast, a pointwise approach does not directly solve a ranking problem, and is therefore inferior to a pairwise counterpart in top-K ranking tasks; however, it is generally advantageous in regards to the convergence time. This study aims to establish an approach to learn personalised ranking from implicit feedback, which reconciles the training efficiency of the pointwise approach and ranking effectiveness of the pairwise counterpart. The key idea is to estimate the ranking of items in a pointwise manner; we first reformulate the conventional pointwise approach based on density ratio estimation and then incorporate the essence of ranking-oriented approaches (e.g. the pairwise approach) into our formulation. Through experiments on three real-world datasets, we demonstrate that our approach dramatically reduces the convergence time (one to two orders of magnitude faster) and significantly improves the ranking performance.

References

[1]
Sreangsu Acharyya, Oluwasanmi Koyejo, and Joydeep Ghosh. 2012. Learning to Rank with Bregman divergences and Monotone Retargeting. In Proceedings of the 28th conference on Uncertainty in artificial intelligence.
[2]
Shivani Agarwal. 2011. The infinite push: A new support vector ranking algorithm that directly optimizes accuracy at the absolute top of the list. In Proceedings of the 2011 SIAM International Conference on Data Mining.
[3]
Aleksandar Botev, Bowen Zheng, and David Barber. 2017. Complementary Sum Sampling for Likelihood Approximation in Large Scale Classification. In Artificial Intelligence and Statistics.
[4]
Zhe Cao, Tao Qin, Tie-Yan Liu, Ming-Feng Tsai, and Hang Li. 2007. Learning to Rank: From Pairwise Approach to Listwise Approach.
[5]
Chong Chen, Min Zhang, Yiqun Liu, and Shaoping Ma. 2019. Social Attentional Memory Network: Modeling Aspect-and Friend-Level Differences in Recommendation. In Proceedings of the 12th ACM International Conference on Web Search and Data Mining.
[6]
Chong Chen, Min Zhang, Weizhi Ma, Yiqun Liu, and Shaoping Ma. 2020. Jointly Non-Sampling Learning for Knowledge Graph Enhanced Recommendation. In Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval.
[7]
Chong Chen, Min Zhang, Chenyang Wang, Weizhi Ma, Minming Li, Yiqun Liu, and Shaoping Ma. 2019. An Efficient Adaptive Transfer Neural Network for Social-Aware Recommendation. In Proceedings of the 42nd International ACM SIGIR Conference on Research and Development in Information Retrieval.
[8]
Chong Chen, Min Zhang, Yongfeng Zhang, Yiqun Liu, and Shaoping Ma. 2020. Efficient Neural Matrix Factorization without Sampling for Recommendation. ACM Transactions on Information Systems (TOIS) (2020).
[9]
Jiawei Chen, Can Wang, Sheng Zhou, Qihao Shi, Jingbang Chen, Yan Feng, and Chun Chen. 2020. Fast Adaptively Weighted Matrix Factorization for Recommendation with Implicit Feedback. In Proceedings of the 34th AAAI Conference on Artificial Intelligence, Vol. 34. 3470–3477.
[10]
Jiawei Chen, Can Wang, Sheng Zhou, Qihao Shi, Yan Feng, and Chun Chen. 2019. Samwalker: Social Recommendation with Informative Sampling Strategy. In The World Wide Web Conference. 228–239.
[11]
Konstantina Christakopoulou and Arindam Banerjee. 2015. Collaborative Ranking with a Push at the Top. In Proceedings of the 24th International Conference on World Wide Web.
[12]
Paolo Cremonesi, Yehuda Koren, and Roberto Turrin. 2010. Performance of Recommender Algorithms on Top-N Recommendation Tasks. In Proceedings of the Fourth ACM Conference on Recommender Systems.
[13]
Robin Devooght, Nicolas Kourtellis, and Amin Mantrach. 2015. Dynamic matrix factorization with priors on unknown values. In Proceedings of the 21th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining.
[14]
Jingtao Ding, Yuhan Quan, Xiangnan He, Yong Li, and Depeng Jin. 2019. Reinforced Negative Sampling for Recommendation with Exposure Data. In Proceedings of the 28th International Joint Conference on Artificial Intelligence.
[15]
Jingtao Ding, Guanghui Yu, Xiangnan He, Fuli Feng, Yong Li, and Depeng Jin. 2021. Sampler Design for Bayesian Personalized Ranking by Leveraging View Data. IEEE Transactions on Knowledge and Data Engineering.
[16]
Marthinus Du Plessis, Gang Niu, and Masashi Sugiyama. 2015. Convex Formulation for Learning from Positive and Unlabeled Data. In Proceedings of the 32nd International Conference on Machine Learning.
[17]
Charles Elkan and Keith Noto. 2008. Learning Classifiers from Only Positive and Unlabeled Data. In Proceedings of the 14th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining.
[18]
Şeyda Ertekin and Cynthia Rudin. 2011. On Equivalence Relationships between Classification and Ranking Algorithms. The Journal of Machine Learning Research(2011).
[19]
Ruining He and Julian McAuley. 2016. Ups and Downs: Modeling the Visual Evolution of Fashion Trends with One-Class Collaborative Filtering. In Proceedings of the 25th International Conference on World Wide Web.
[20]
Xiangnan He, Kuan Deng, Xiang Wang, Yan Li, YongDong Zhang, and Meng Wang. 2020. LightGCN: Simplifying and Powering Graph Convolution Network for Recommendation. In Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval.
[21]
Xiangnan He, Lizi Liao, Hanwang Zhang, Liqiang Nie, Xia Hu, and Tat-Seng Chua. 2017. Neural Collaborative Filtering. In Proceedings of the 26th International Conference on World Wide Web.
[22]
Xiangnan He, Jinhui Tang, Xiaoyu Du, Richang Hong, Tongwei Ren, and Tat-Seng Chua. 2020. Fast Matrix Factorization with Nonuniform Weights on Missing Data. IEEE Transactions on Neural Networks and Learning Systems (2020).
[23]
Xiangnan He, Hanwang Zhang, Min-Yen Kan, and Tat-Seng Chua. 2016. Fast Matrix Factorization for Online Recommendation with Implicit Feedback. In Proceedings of the 39th International ACM SIGIR conference on Research and Development in Information Retrieval.
[24]
Yifan Hu, Yehuda Koren, and Chris Volinsky. 2008. Collaborative Filtering for Implicit Feedback Datasets. In The eighth IEEE International Conference on Data Mining.
[25]
Shanshan Huang, Shuaiqiang Wang, Tie-Yan Liu, Jun Ma, Zhumin Chen, and Jari Veijalainen. 2015. Listwise Collaborative Filtering. In Proceedings of the 38th International ACM SIGIR Conference on Research and Development in Information Retrieval.
[26]
Kalervo Järvelin and Jaana Kekäläinen. 2002. Cumulated Gain-based Evaluation of IR Techniques. ACM Transactions on Information Systems (TOIS) (2002).
[27]
Takafumi Kanamori, Shohei Hido, and Masashi Sugiyama. 2009. A Least-Squares Approach to Direct Importance Estimation. In The Journal of Machine Learning Research.
[28]
Masahiro Kato and Takeshi Teshima. 2020. Non-Negative Bregman Divergence Minimization for Deep Direct Density Ratio Estimation. arXiv preprint arXiv:2006.06979(2020).
[29]
Thomas N Kipf and Max Welling. 2017. Semi-Supervised Classification with Graph Convolutional Networks. In International Conference on Learning Representations.
[30]
Ryuichi Kiryo, Gang Niu, Marthinus C Du Plessis, and Masashi Sugiyama. 2017. Positive-Unlabeled Learning with Non-negative Risk Estimator. In Advances in Neural Information Processing Systems.
[31]
Yehuda Koren, Robert Bell, and Chris Volinsky. 2009. Matrix Factorization Techniques for Recommender Systems. Computer 42, 8 (2009), 30–37.
[32]
Solomon Kullback and Richard A Leibler. 1951. On Information and Sufficiency. The Annals of Mathematical Statistics.
[33]
Pengfei Li, Mark Sanderson, Mark Carman, and Falk Scholer. 2016. On the Effectiveness of Query Weighting for Adapting Rank Learners to New Unlabelled Collections. In Proceedings of the 25th ACM International on Conference on Information and Knowledge Management.
[34]
Dawen Liang, Laurent Charlin, James McInerney, and David M Blei. 2016. Modeling User Exposure in Recommendation. In Proceedings of the 25th International Conference on World Wide Web.
[35]
Dawen Liang, Rahul G Krishnan, Matthew D Hoffman, and Tony Jebara. 2018. Variational Autoencoders for Collaborative Filtering. In The World Wide Web Conference.
[36]
Aditya Menon and Cheng Soon Ong. 2016. Linking Losses for Density Ratio and Class-Probability Estimation. In International Conference on Machine Learning.
[37]
Rong Pan and Martin Scholz. 2009. Mind the Gaps: Weighting the Unknown in Large-Scale One-Class Collaborative Filtering. In Proceedings of the 15th ACM SIGKDD international conference on Knowledge discovery and data mining.
[38]
Rong Pan, Yunhong Zhou, Bin Cao, Nathan N Liu, Rajan Lukose, Martin Scholz, and Qiang Yang. 2008. One-Class Collaborative Filtering. In The eighth IEEE International Conference on Data Mining.
[39]
Dae Hoon Park and Yi Chang. 2019. Adversarial Sampling and Training for Semi-Supervised Information Retrieval. In The World Wide Web Conference.
[40]
Alain Rakotomamonjy. 2012. Sparse Support Vector Infinite Push. arXiv preprint arXiv:1206.6432(2012).
[41]
Pradeep Ravikumar, Ambuj Tewari, and Eunho Yang. 2011. On NDCG Consistency of Listwise Ranking Methods. In Proceedings of the 14th International Conference on Artificial Intelligence and Statistics.
[42]
Shangkun Ren, Yuexian Hou, Peng Zhang, and Xueru Liang. 2011. Importance Weighted Adarank. In International Conference on Intelligent Computing.
[43]
Steffen Rendle and Christoph Freudenthaler. 2014. Improving Pairwise Learning for Item Recommendation from Implicit Feedback. In Proceedings of the 7th ACM international conference on Web search and data mining.
[44]
Steffen Rendle, Christoph Freudenthaler, Zeno Gantner, and Lars Schmidt-Thieme. 2009. BPR: Bayesian Personalized Ranking from Implicit Feedback. In UAI.
[45]
Steffen Rendle, Walid Krichene, Li Zhang, and John Anderson. 2020. Neural Collaborative Filtering vs. Matrix Factorization Revisited. In Fourteenth ACM Conference on Recommender Systems.
[46]
Cynthia Rudin. 2009. The P-Norm Push: A Simple Convex Ranking Algorithm that Concentrates at the Top of the List. In Journal of Machine Learning Research.
[47]
Yuta Saito, Suguru Yaginuma, Yuta Nishino, Hayato Sakata, and Kazuhide Nakata. 2020. Unbiased Recommender Learning from Missing-Not-At-Random Implicit Feedback. In Proceedings of the 13th International Conference on Web Search and Data Mining.
[48]
Tetsuya Sakai. 2018. Laboratory Experiments in Information Retrieval: Sample Sizes, Effect Sizes, and Statistical Power. Springer.
[49]
Ilya Shenbin, Anton Alekseev, Elena Tutubalina, Valentin Malykh, and Sergey I Nikolenko. 2020. RecVAE: A New Variational Autoencoder for Top-N Recommendations with Implicit Feedback. In Proceedings of the 13th International Conference on Web Search and Data Mining.
[50]
Yue Shi, Martha Larson, and Alan Hanjalic. 2010. List-wise Learning to Rank with Matrix Factorization for Collaborative Filtering. In Proceedings of the fourth ACM Conference on Recommender Systems.
[51]
Hidetoshi Shimodaira. 2000. Improving Predictive Inference under Covariate Shift by Weighting the Log-Likelihood Function. In Journal of Statistical Planning and Inference.
[52]
Harald Steck. 2011. Item Popularity and Recommendation Accuracy. In Proceedings of the Fifth ACM Conference on Recommender Systems.
[53]
Harald Steck. 2019. Embarrassingly Shallow Autoencoders for Sparse Data. In The World Wide Web Conference.
[54]
Masashi Sugiyama, Taiji Suzuki, and Takafumi Kanamori. 2012. Density-Ratio Matching under the Bregman divergence: A Unified Framework of Density-Ratio Estimation. Annals of the Institute of Statistical Mathematics.
[55]
Masashi Sugiyama, Taiji Suzuki, Shinichi Nakajima, Hisashi Kashima, Paul von Bünau, and Motoaki Kawanabe. 2008. Direct Importance Estimation for Covariate Shift Adaptation. Annals of the Institute of Statistical Mathematics.
[56]
Jun Wang, Lantao Yu, Weinan Zhang, Yu Gong, Yinghui Xu, Benyou Wang, Peng Zhang, and Dell Zhang. 2017. IRGAN: A Minimax Game for Unifying Generative and Discriminative Information Retrieval Models. In Proceedings of the 40th International ACM SIGIR Conference on Research and Development in Information Retrieval.
[57]
Xiang Wang, Xiangnan He, Meng Wang, Fuli Feng, and Tat-Seng Chua. 2019. Neural Graph Collaborative Filtering. In Proceedings of the 42nd International ACM SIGIR Conference on Research and Development in Information Retrieval.
[58]
Xiang Wang, Yaokun Xu, Xiangnan He, Yixin Cao, Meng Wang, and Tat-Seng Chua. 2020. Reinforced Negative Sampling over Knowledge Graph for Recommendation. In The World Wide Web Conference.
[59]
Jun Xu and Hang Li. 2007. Adarank: A Boosting Algorithm for Information Retrieval. In Proceedings of the 30th Annual International ACM SIGIR Conference on Research and Development in Information Retrieval.
[60]
Weinan Zhang, Tianqi Chen, Jun Wang, and Yong Yu. 2013. Optimizing Top-N Collaborative Filtering via Dynamic Negative Item Sampling. In Proceedings of the 36th International ACM SIGIR Conference on Research and Development in Information Retrieval.

Cited By

View all
  • (2024)Improved Diversity-Promoting Collaborative Metric Learning for RecommendationIEEE Transactions on Pattern Analysis and Machine Intelligence10.1109/TPAMI.2024.341268746:12(9004-9022)Online publication date: Dec-2024
  • (2023)ApeGNN: Node-Wise Adaptive Aggregation in GNNs for RecommendationProceedings of the ACM Web Conference 202310.1145/3543507.3583530(759-769)Online publication date: 30-Apr-2023

Recommendations

Comments

Please enable JavaScript to view thecomments powered by Disqus.

Information & Contributors

Information

Published In

cover image ACM Conferences
WWW '21: Proceedings of the Web Conference 2021
April 2021
4054 pages
ISBN:9781450383127
DOI:10.1145/3442381
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

Publisher

Association for Computing Machinery

New York, NY, United States

Publication History

Published: 03 June 2021

Permissions

Request permissions for this article.

Check for updates

Author Tags

  1. collaborative filtering
  2. implicit feedback
  3. learning to rank
  4. personalised recommendation
  5. semi-supervised learning

Qualifiers

  • Research-article
  • Research
  • Refereed limited

Conference

WWW '21
Sponsor:
WWW '21: The Web Conference 2021
April 19 - 23, 2021
Ljubljana, Slovenia

Acceptance Rates

Overall Acceptance Rate 1,899 of 8,196 submissions, 23%

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • Downloads (Last 12 months)17
  • Downloads (Last 6 weeks)1
Reflects downloads up to 27 Nov 2024

Other Metrics

Citations

Cited By

View all
  • (2024)Improved Diversity-Promoting Collaborative Metric Learning for RecommendationIEEE Transactions on Pattern Analysis and Machine Intelligence10.1109/TPAMI.2024.341268746:12(9004-9022)Online publication date: Dec-2024
  • (2023)ApeGNN: Node-Wise Adaptive Aggregation in GNNs for RecommendationProceedings of the ACM Web Conference 202310.1145/3543507.3583530(759-769)Online publication date: 30-Apr-2023

View Options

Login options

View options

PDF

View or Download as a PDF file.

PDF

eReader

View online with eReader.

eReader

HTML Format

View this article in HTML Format.

HTML Format

Media

Figures

Other

Tables

Share

Share

Share this Publication link

Share on social media