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

Skip to main content
Log in

Neural Explainable Recommender Model Based on Attributes and Reviews

  • Regular Paper
  • Published:
Journal of Computer Science and Technology Aims and scope Submit manuscript

Abstract

Explainable recommendation, which can provide reasonable explanations for recommendations, is increasingly important in many fields. Although traditional embedding-based models can learn many implicit features, resulting in good performance, they cannot provide the reason for their recommendations. Existing explainable recommender methods can be mainly divided into two types. The first type models highlight reviews written by users to provide an explanation. For the second type, attribute information is taken into consideration. These approaches only consider one aspect and do not make the best use of the existing information. In this paper, we propose a novel neural explainable recommender model based on attributes and reviews (NERAR) for recommendation that combines the processing of attribute features and review features. We employ a tree-based model to extract and learn attribute features from auxiliary information, and then we use a time-aware gated recurrent unit (T-GRU) to model user review features and process item review features based on a convolutional neural network (CNN). Extensive experiments on Amazon datasets demonstrate that our model outperforms the state-of-the-art recommendation models in accuracy of recommendations. The presented examples also show that our model can offer more reasonable explanations. Crowd-sourcing based evaluations are conducted to verify our model’s superiority in explainability.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Subscribe and save

Springer+ Basic
$34.99 /Month
  • Get 10 units per month
  • Download Article/Chapter or eBook
  • 1 Unit = 1 Article or 1 Chapter
  • Cancel anytime
Subscribe now

Buy Now

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

Explore related subjects

Discover the latest articles, news and stories from top researchers in related subjects.

References

  1. Zheng L, Noroozi V, Yu P S. Joint deep modeling of users and items using reviews for recommendation. In Proc. the 10th ACM International Conference on Web Search and Data Mining, February 2017, pp.425-434.

  2. He X, Liao L, Zhang H, Nie L, Hu X, Chua T S. Neural collaborative filtering. In Proc. the 26th International Conference on World Wide Web, April 2017, pp.173-182.

  3. Koren Y, Bell R. Advances in collaborative filtering. In Recommender Systems Handbook (2nd edition), Ricci F, Rokach L, Shapira B (eds.), Springer-Verlag, 2015, pp.77-118.

  4. Chen C, Zhang M, Liu Y, Ma S. Neural attentional rating regression with review-level explanations. In Proc. the 2018 International Conference on World Wide Web, April 2018, pp.1583-1592.

  5. Chen X, Zhang Y, Qin Z. Dynamic explainable recommendation based on neural attentive models. In Proc. the 33rd AAAI Conf. Artificial Intelligence, July 2019, pp.53-60.

  6. Zhao Q, Shi Y, Hong L. GB-CENT: Gradient boosted categorical embedding and numerical trees. In Proc. the 26th International Conference on World Wide Web, April 2017, pp.1311-1319.

  7. He X, Pan J, Jin O et al. Practical lessons from predicting clicks on Ads at Facebook. In Proc. the 8th International Workshop on Data Mining for Online Advertising, August 2014, Article No. 5.

  8. Wang X, He X, Feng F, Nie L, Chua T S. TEM: Tree-enhanced embedding model for explainable recommendation. In Proc. the 2018 International Conference on World Wide Web, April 2018, pp.1543-1552.

  9. Chen T, Guestrin C. XGBoost: A scalable tree boosting system. In Proc. the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, August 2016, pp.785-794.

  10. Friedman J H. Greedy function approximation: A gradient boosting machine. The Annals of Statistics, 2001, 29(5): 1189-1232.

    Article  MathSciNet  Google Scholar 

  11. Breiman L. Random forests. Machine Learning, 2001, 45(1): 5-32.

    Article  Google Scholar 

  12. Cho, K, van Merrienboer B, Gülçehre Ç et al. Learning phrase representations using RNN encoder-decoder for statistical machine translation. arXiv:1406.1078, 2014. https://arxiv.org/abs/1406.1078, March 2020.

  13. Kim Y. Convolutional neural networks for sentence classification. arXiv:1408.5882, 2014. https://arxiv.org/abs/1408.5882, March 2020.

  14. Mnih A, Salakhutdinov R R. Probabilistic matrix factorization. In Proc. the 21st Annual Conference on Neural Information Processing Systems, December 2007, pp.1257-1264.

  15. He X, Chen T, Kan M Y, Chen X. TriRank: Review-aware explainable recommendation by modeling aspects. In Proc. the 24th ACM International Conference on Information and Knowledge Management, October 2015, pp.1661-1670.

  16. Ling G, Lyu M R, King I. Ratings meet reviews, a combined approach to recommend. In Proc. the 8th ACM Conference on Recommender Systems, October 2014, pp.105-112.

  17. McAuley J, Leskovec J. Hidden factors and hidden topics: Understanding rating dimensions with review text. In Proc. the 7th ACM Conference on Recommender Systems, October 2013, pp.165-172.

  18. Tan Y, Zhang M, Liu Y, Ma S. Rating-boosted latent topics: Understanding users and items with ratings and reviews. In Proc. the 25th International Joint Conference on Artificial Intelligence, July 2016, pp.2640-2646.

  19. Zhang Y, Lai G, Zhang M, Zhang Y, Liu Y, Ma S. Explicit factor models for explainable recommendation based on phrase-level sentiment analysis. In Proc. the 37th International ACM SIGIR Conference on Research Development in Information Retrieval, July 2014, pp.83-92.

  20. Zhang Y, Zhang M, Zhang Y et al. Daily-aware personalized recommendation based on feature-level time series analysis. In Proc. the 24th International Conference on World Wide Web, May 2015, pp.1373-1383.

  21. Zhang Y. Incorporating phrase-level sentiment analysis on textual reviews for personalized recommendation. In Proc. the 8th ACM International Conference on Web Search and Data Mining, February 2015, pp.435-440.

  22. Shi C, Kong X, Huang Y, Yu P S, Wu B. HeteSim: A general framework for relevance measure in heterogeneous networks. IEEE Transactions on Knowledge and Data Engineering, 2014, 26(10): 2479-2492.

    Article  Google Scholar 

  23. Shi C, Hu B, Zhao W X, Yu P S. Heterogeneous information network embedding for recommendation. IEEE Transactions on Knowledge and Data Engineering, 2018, 31(2): 357-370.

    Article  Google Scholar 

  24. Han X, Shi C, Wang S, Yu P S, Song L. Aspect-level deep collaborative filtering via heterogeneous information networks. In Proc. the 27th International Joint Conference on Artificial Intelligence, July 2018, pp.3393-3399.

  25. Wang X, Wang D, Xu C, He X, Cao Y, Chua T S. Explainable reasoning over knowledge graphs for recommendation. In Proc. the 33rd AAAI Conference on Artificial Intelligence, July 2019, pp.5329-5336.

  26. Gan M X, Sun L, Jiang R. Trinity: Walking on a user-object-tag heterogeneous network for personalised recommendation. Journal of Computer Science and Technology, 2016, 31(3): 577-594.

    Article  Google Scholar 

  27. Guo L, Ma J, Jiang H R, Chen Z M, Xing C M. Social trust aware item recommendation for implicit feedback. Journal of Computer Science and Technology, 2015, 30(5): 1039-1053.

    Article  MathSciNet  Google Scholar 

  28. Guo L, Wen Y F, Wang X H. Exploiting pre-trained network embeddings for recommendations in social networks. Journal of Computer Science and Technology, 2018, 33(4): 682-696.

    Article  Google Scholar 

  29. Xin X, Lin C Y, Wei X C, Huang H Y. When factorization meets heterogeneous latent topics: An interpretable cross site recommendation framework. Journal of Computer Science and Technology, 2015, 30(4): 917-932.

    Article  MathSciNet  Google Scholar 

  30. Costa F, Ouyang S, Dolog P et al. Automatic generation of natural language explanations. In Proc. the 23rd International Conference on Intelligent User Interfaces Companion, March 2018, Article No. 57.

  31. Tao Y, Jia Y, Wang N, Wang H. The facT: Taming latent factor models for explainability with factorization trees. In Proc. the 42nd Int. ACM SIGIR Conference on Research and Development in Information Retrieval, July 2019, pp.295-304.

  32. Gao J Y, Wang X T, Wang Y S, Xie X. Explainable recommendation through attentive multi-view learning. In Proc. the 33rd AAAI Conference on Artificial Intelligence, January 2019, pp.3622-3629.

  33. Chen Z, Wang X, Xie X, Wu T, Bu G Q, Wang Y N, Chen E H. Co-attentive multi-task learning for explainable recommendation. In Proc. the 28th International Joint Conference on Artificial Intelligence, August 2019, pp.2137-2143.

Download references

Author information

Authors and Affiliations

Authors

Corresponding author

Correspondence to Jing Huang.

Rights and permissions

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

Liu, YY., Yang, B., Pei, HB. et al. Neural Explainable Recommender Model Based on Attributes and Reviews. J. Comput. Sci. Technol. 35, 1446–1460 (2020). https://doi.org/10.1007/s11390-020-0152-8

Download citation

  • Received:

  • Revised:

  • Published:

  • Issue Date:

  • DOI: https://doi.org/10.1007/s11390-020-0152-8

Keywords

Navigation