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

skip to main content
10.1145/3178876.3186145acmotherconferencesArticle/Chapter ViewAbstractPublication PagesthewebconfConference Proceedingsconference-collections
research-article
Free access

Aspect-Aware Latent Factor Model: Rating Prediction with Ratings and Reviews

Published: 23 April 2018 Publication History

Abstract

Although latent factor models (e.g., matrix factorization) achieve good accuracy in rating prediction, they suffer from several problems including cold-start, non-transparency, and suboptimal recommendation for local users or items. In this paper, we employ textual review information with ratings to tackle these limitations. Firstly, we apply a proposed aspect-aware topic model (ATM) on the review text to model user preferences and item features from different aspects, and estimate the aspect importance of a user towards an item. The aspect importance is then integrated into a novel aspect-aware latent factor model (ALFM), which learns user's and item's latent factors based on ratings. In particular, ALFM introduces a weighted matrix to associate those latent factors with the same set of aspects discovered by ATM, such that the latent factors could be used to estimate aspect ratings. Finally, the overall rating is computed via a linear combination of the aspect ratings, which are weighted by the corresponding aspect importance. To this end, our model could alleviate the data sparsity problem and gain good interpretability for recommendation. Besides, an aspect rating is weighted by an aspect importance, which is dependent on the targeted user's preferences and targeted item's features. Therefore, it is expected that the proposed method can model a user's preferences on an item more accurately for each user-item pair locally. Comprehensive experimental studies have been conducted on 19 datasets from Amazon and Yelp 2017 Challenge dataset. Results show that our method achieves significant improvement compared with strong baseline methods, especially for users with only few ratings. Moreover, our model could interpret the recommendation results in depth.

References

[1]
R. Arun, V. Suresh, CE V. Madhavan, and MN N. Murthy. 2010. On finding the natural number of topics with latent dirichlet allocation: Some observations Pacific-Asia Conference on Knowledge Discovery and Data Mining. Springer, 391--402.
[2]
Y. Bao, H. Fang, and J. Zhang. 2014. TopicMF: Simultaneously exploiting ratings and reviews for recommendation Proceedings of the 28th AAAI Conference on Artificial Intelligence. 2--8.
[3]
R. M Bell and Y. Koren. 2007. Lessons from the Netflix prize challenge. ACM SIGKDD Explorations Newsletter Vol. 9, 2 (2007), 75--79.
[4]
David M Blei. 2012. Probabilistic topic models. Commun. ACM Vol. 55, 4 (2012), 77--84.
[5]
D. M. Blei, A. Y. Ng, and M. I. Jordan. 2003. Latent dirichlet allocation. Journal of Machine Learning Research Vol. 3 (2003), 993--1022.
[6]
R. Catherine and W. Cohen. 2017. TransNets: Learning to Transform for Recommendation Proceedings of the 11th ACM Conference on Recommender Systems. ACM, 288--296.
[7]
Z. Cheng and J. Shen. 2016. On effective location-aware music recommendation. ACM Trans. Inf. Syst. Vol. 34, 2 (2016), 13:1--13:32.
[8]
Z. Cheng, J. Shen, L. Nie, T.-S. Chua, and M. Kankanhalli. 2017 a. Exploring user-specific information in music retrieval Proceedings of the 40th International ACM SIGIR Conference on Research and Development in Information Retrieval. ACM, 655--664.
[9]
Z. Cheng, J. Shen, L. Zhu, M. Kankanhalli, and L. Nie. 2017 b. Exploiting music play sequence for music recommendation Proceedings of the 26th International Joint Conference on Artificial Intelligence. 3654--3660.
[10]
E. Christakopoulou and G. Karypis. 2016. Local item-item models for top-n recommendation. Proceedings of the 10th ACM Conference on Recommender Systems. ACM, 67--74.
[11]
P. Covington, J. Adams, and E. Sargin. 2016. Deep neural networks for youtube recommendations. Proceedings of the 10th ACM Conference on Recommender Systems. ACM, 191--198.
[12]
Q. Diao, M. Qiu, C.-Y. Wu, A. J Smola, J. Jiang, and C. Wang. 2014. Jointly modeling aspects, ratings and sentiments for movie recommendation (jmars) Proceedings of the 20th ACM SIGKDD international conference on Knowledge discovery and data mining. ACM, 193--202.
[13]
D. M. Endres and J. E Schindelin. 2003. A new metric for probability distributions. IEEE Trans. Inf. Theory Vol. 49, 7 (2003), 1858--1860.
[14]
G. Ganu, N. Elhadad, and A. Marian. 2009. Beyond the Stars: Improving Rating Predictions using Review Text Content Proceedings of the 12th International Workshop on the Web and Databases, Vol. Vol. 9. Citeseer, 1--6.
[15]
T. L Griffiths and M. Steyvers. 2004. Finding scientific topics. Proceedings of the National Academy of Sciences, Vol. 101, Suppl 1 (2004), 5228--5235.
[16]
R. He and J. McAuley. 2016. VBPR: visual bayesian personalized ranking from implicit feedback Proceedings of the 30th AAAI Conference on Artificial Intelligence. 144--150.
[17]
X. He, T. Chen, M.-Y. Kan, and X. Chen. 2015. Trirank: Review-aware explainable recommendation by modeling aspects Proceedings of the 24th ACM International on Conference on Information and Knowledge Management. ACM, 1661--1670.
[18]
X. He and T.-S. Chua. 2017. Neural factorization machines for sparse predictive analytics Proceedings of the 40th International ACM SIGIR conference on Research and Development in Information Retrieval. ACM, 355--364.
[19]
X. He, L. Liao, H. Zhang, L. Nie, X. Hu, and T.-S. Chua. 2017. Neural collaborative filtering. In Proceedings of the 26th International Conference on World Wide Web. International World Wide Web Conferences Steering Committee, 173--182.
[20]
X. He, H. Zhang, M.-Y. Kan, and T.-S. Chua. 2016. Fast matrix factorization for online recommendation with implicit feedback Proceedings of the 39th International ACM SIGIR conference on Research and Development in Information Retrieval. ACM, 549--558.
[21]
Y. Koren, R. Bell, and C. Volinsky. 2009. Matrix factorization techniques for recommender systems. Computer, Vol. 42, 8 (2009), 30--37.
[22]
F. Li, S. Wang, S. Liu, and M. Zhang. 2014. SUIT: A supervised user-item based topic model for sentiment analysis Proceedings of the 28th AAAI Conference on Artificial Intelligence. 1636--1642.
[23]
G. Ling, M. Lyu, and I. King. 2014. Ratings meet reviews, a combined approach to recommend Proceedings of the 8th ACM Conference on Recommender systems. ACM, 105--112.
[24]
H. Ma, D. Zhou, C. Liu, M. Lyu, and I. King. 2011. Recommender systems with social regularization. In Proceedings of the fourth ACM international conference on Web search and data mining. ACM, 287--296.
[25]
J. Mairal, F. Bach, J. Ponce, and G. Sapiro. 2010. Online learning for matrix factorization and sparse coding. Journal of Machine Learning Research Vol. 11, Jan (2010), 19--60.
[26]
J. McAuley and J. Leskovec. 2013. Hidden factors and hidden topics: understanding rating dimensions with review text Proceedings of the 7th ACM conference on Recommender systems. ACM, 165--172.
[27]
N. Pappas and A. Popescu-Belis. 2013. Sentiment analysis of user comments for one-class collaborative filtering over ted talks Proceedings of the 36th international ACM SIGIR conference on Research and development in information retrieval. ACM, 773--776.
[28]
vS. Pero and T. Horváth. 2013. Opinion-driven matrix factorization for rating prediction International Conference on User Modeling, Adaptation, and Personalization. Springer, 1--13.
[29]
L. Qiu, S. Gao, W. Cheng, and J. Guo. 2016. Aspect-based latent factor model by integrating ratings and reviews for recommender system. Knowledge-Based Systems Vol. 110 (2016), 233--243.
[30]
Y. Shi, M. Larson, and A. Hanjalic. 2013. Mining contextual movie similarity with matrix factorization for context-aware recommendation. ACM Trans. Intell. Syst. Technol. Vol. 4, 1 (2013), 16.
[31]
Y. Tan, M. Zhang, Y. Liu, and S. Ma. 2016. Rating-boosted latent topics: Understanding users and items with ratings and reviews Proceedings of the 25th International Joint Conference on Artificial Intelligence. 2640--2646.
[32]
C. Wang and D. Blei. 2011. Collaborative topic modeling for recommending scientific articles Proceedings of the 17th ACM SIGKDD International conference on Knowledge Discovery and Data Mining. ACM, 448--456.
[33]
H. Wang, Y. Lu, and C. Zhai. 2011. Latent aspect rating analysis without aspect keyword supervision Proceedings of the 17th ACM SIGKDD international conference on Knowledge discovery and data mining. ACM, 618--626.
[34]
X. Wang, X. He, L. Nie, and T.-S. Chua. 2017. Item silk road: Recommending items from information domains to social users Proceedings of the 40th International ACM SIGIR conference on Research and Development in Information Retrieval. ACM, 185--194.
[35]
X. Wang, X. He, L. Nie, and T.-S. Chua. 2018. TEM: Tree-enhanced embedding model for explainable recommendation Proceedings of the 27th International Conference on World Wide Web. International World Wide Web Conferences Steering Committee.
[36]
Y. Wu and M. Ester. 2015. FLAME: A probabilistic model combining aspect based opinion mining and collaborative filtering. In Proceedings of the Eighth ACM International Conference on Web Search and Data Mining. ACM, 199--208.
[37]
H. Zhang, F. Shen, W. Liu, X. He, H. Luan, and T.-S. Chua. 2016 a. Discrete collaborative filtering. In Proceedings of the 39th International ACM SIGIR conference on Research and Development in Information Retrieval. ACM, 325--334.
[38]
H. Zhang, Z.-J. Zha, Y. Yang, S. Yan, Y. Gao, and T.-S. Chua. 2014. Attribute-augmented semantic hierarchy: towards a unified framework for content-based image retrieval. ACM Transactions on Multimedia Computing, Communications, and Applications, Vol. 11, 1s (2014), 21:1--21:21.
[39]
W. Zhang and J. Wang. 2016. Integrating topic and latent factors for scalable personalized review-based rating prediction. IEEE Trans. Knowledge Data Eng. Vol. 28, 11 (2016), 3013--3027.
[40]
W. Zhang, Q. Yuan, J. Han, and J. Wang. 2016 b. Collaborative multi-level embedding learning from reviews for rating prediction Proceedings of the 25th International Joint Conference on Artificial Intelligence. 2986--2992.
[41]
Y. Zhang, Q. Ai, X. Chen, and W. B. Croft. 2017. Joint representation learning for top-n recommendation with heterogeneous information sources. In Proceedings of the 2017 ACM on Conference on Information and Knowledge Management. ACM, 1449--1458.
[42]
Y. Zhang, G. Lai, M. Zhang, Y. Zhang, Y. Liu, and S. Ma. 2015. Explicit factor models for explainable recommendation based on phrase-level sentiment analysis. In Proceedings of the 24th ACM International on Conference on Information and Knowledge Management. ACM, 1661--1670.
[43]
L. Zheng, V. Noroozi, and P. S Yu. 2017. Joint deep modeling of users and items using reviews for recommendation Proceedings of the Tenth ACM International Conference on Web Search and Data Mining. ACM, 425--434.

Cited By

View all
  • (2024)Explicitly Exploiting Implicit User and Item Relations in Graph Convolutional Network (GCN) for RecommendationElectronics10.3390/electronics1314281113:14(2811)Online publication date: 17-Jul-2024
  • (2024)Leveraging user’s preference and social circle for personalized recommendation via matrix factorization with sub-linear convergence rateJournal of Intelligent & Fuzzy Systems10.3233/JIFS-231264(1-13)Online publication date: 21-Oct-2024
  • (2024)Disentangled Cascaded Graph Convolution Networks for Multi-Behavior RecommendationACM Transactions on Recommender Systems10.1145/36732442:4(1-27)Online publication date: 17-Jun-2024
  • Show More Cited By

Recommendations

Comments

Please enable JavaScript to view thecomments powered by Disqus.

Information & Contributors

Information

Published In

cover image ACM Other conferences
WWW '18: Proceedings of the 2018 World Wide Web Conference
April 2018
2000 pages
ISBN:9781450356398
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

  • IW3C2: International World Wide Web Conference Committee

In-Cooperation

Publisher

International World Wide Web Conferences Steering Committee

Republic and Canton of Geneva, Switzerland

Publication History

Published: 23 April 2018

Permissions

Request permissions for this article.

Check for updates

Author Tags

  1. aspect-aware
  2. matrix factorization
  3. recommendation
  4. review-aware
  5. topic model

Qualifiers

  • Research-article

Funding Sources

  • International Research Centre in Singapore Funding Initiative

Conference

WWW '18
Sponsor:
  • IW3C2
WWW '18: The Web Conference 2018
April 23 - 27, 2018
Lyon, France

Acceptance Rates

WWW '18 Paper Acceptance Rate 170 of 1,155 submissions, 15%;
Overall Acceptance Rate 1,899 of 8,196 submissions, 23%

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • Downloads (Last 12 months)558
  • Downloads (Last 6 weeks)65
Reflects downloads up to 12 Nov 2024

Other Metrics

Citations

Cited By

View all
  • (2024)Explicitly Exploiting Implicit User and Item Relations in Graph Convolutional Network (GCN) for RecommendationElectronics10.3390/electronics1314281113:14(2811)Online publication date: 17-Jul-2024
  • (2024)Leveraging user’s preference and social circle for personalized recommendation via matrix factorization with sub-linear convergence rateJournal of Intelligent & Fuzzy Systems10.3233/JIFS-231264(1-13)Online publication date: 21-Oct-2024
  • (2024)Disentangled Cascaded Graph Convolution Networks for Multi-Behavior RecommendationACM Transactions on Recommender Systems10.1145/36732442:4(1-27)Online publication date: 17-Jun-2024
  • (2024)Enhancing Content-based Recommendation via Large Language ModelProceedings of the 33rd ACM International Conference on Information and Knowledge Management10.1145/3627673.3679913(4153-4157)Online publication date: 21-Oct-2024
  • (2024)GCTransNet: Combining Graph Convolutional Networks and Transformers for High-Performance and Rapidly Converging Link Prediction2024 IEEE 4th International Conference on Electronic Technology, Communication and Information (ICETCI)10.1109/ICETCI61221.2024.10594469(377-383)Online publication date: 24-May-2024
  • (2024)A privacy-preserving framework with multi-modal data for cross-domain recommendationKnowledge-Based Systems10.1016/j.knosys.2024.112529304(112529)Online publication date: Nov-2024
  • (2024)A counterfactual explanation method based on modified group influence function for recommendationComplex & Intelligent Systems10.1007/s40747-024-01547-410:6(7631-7643)Online publication date: 27-Jul-2024
  • (2024)EMPNet: An extract-map-predict neural network architecture for cross-domain recommendationWorld Wide Web10.1007/s11280-024-01240-z27:2Online publication date: 3-Feb-2024
  • (2024)A type-2 fuzzy review topic-based model for personalized recommendationElectronic Commerce Research10.1007/s10660-024-09829-2Online publication date: 9-Apr-2024
  • (2024)Evaluating the quality of student-generated content in learnersourcing: A large language model based approachEducation and Information Technologies10.1007/s10639-024-12851-4Online publication date: 17-Jul-2024
  • Show More Cited By

View 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

Get Access

Login options

Media

Figures

Other

Tables

Share

Share

Share this Publication link

Share on social media