Research Article
BibTex RIS Cite
Year 2023, , 35 - 45, 29.01.2024
https://doi.org/10.53508/ijiam.1406498

Abstract

References

  • M. Gao, J. Zhang, J. Yu, J. Li, J.Wen, and Q. Xiong. Recommender systems based on generative adversarial networks: A problem-driven perspective. Information Sciences, 546:1166-1185, Feb. 2021.
  • M. Al-Ghossein. Context-aware recommender systems for real-world applications. PhD thesis, Universit Paris Saclay (COmUE), 2019.
  • A. Banerjee, P. Banik, and W. Wrndl. A review on individual and multistakeholder fairness in tourism recommender systems. Front Big Data, 6:1168692, May 2023.
  • D. Kotkov, J. A. Konstan, Q. Zhao, and J. Veijalainen. Investigating serendipity in recommender systems based on real user feedback. In Proceedings of the 33rd Annual ACM Symposium on Applied Computing, SAC '18, pages 1341-1350, New York, NY, USA, Apr. 2018. Association for Computing Machinery.
  • I. Goodfellow et al. Generative adversarial nets. In Advances in Neural Information Processing Systems. Curran Associates, Inc., 2014.
  • D. Saxena and J. Cao. Generative adversarial networks (gans): Challenges, solutions, and future directions. ACM Comput. Surv., 54(3):1-42, Apr. 2022.
  • S. Kumar and M. D. Gupta. c+GAN: Complementary fashion item recommendation. arXiv, Jun. 2019.
  • Xinshi Chen, Shuang Li, Hui Li, Shaohua Jiang, Yuan Qi, and Le Song. Generative adversarial user model for reinforcement learning based recommendation system. In Kamalika Chaudhuri and Ruslan Salakhutdinov, editors, Proceedings of the 36th International Conference on Machine Learning, volume 97 of Proceedings of Machine Learning Research, pages 1052-1061. PMLR, 09-15 Jun 2019.
  • W. Shafqat and Y.-C. Byun. A hybrid gan-based approach to solve imbalanced data problem in recommendation systems. IEEE Access, 10:11036-11047, 2022.
  • J. Bobadilla, A. Gutirrez, R. Yera, and L. Martnez. Creating synthetic datasets for collaborative filtering recommender systems using generative adversarial networks. arXiv, Mar. 2023.
  • E. E. Stephy and M. Rajeswari. Empowering tourists with context-aware recommendations using gan. In 2023 Second International Conference on Electronics and Renewable Systems (ICEARS), pages 1444-1449, Mar. 2023.
  • T. Sasagawa, S. Kawai, and H. Nobuhara. Recommendation system based on generative adversarial network with graph convolutional layers. JACIII, 25(4):389-396, Jul. 2021.
  • R. Yin, K. Li, J. Lu, and G. Zhang. Rsygan: Generative adversarial network for recommender systems. In 2019 International Joint Conference on Neural Networks (IJCNN), pages 1-7, Jul. 2019.
  • J. Wen, B.-Y. Chen, C.-D. Wang, and Z. Tian. Prgan: Personalized recommendation with conditional generative adversarial networks. In 2021 IEEE International Conference on Data Mining (ICDM), pages 729-738, Dec. 2021.
  • E. Dervishaj and P. Cremonesi. Gan-based matrix factorization for recommender systems. In Proceedings of the 37th ACM/SIGAPP Symposium on Applied Computing, SAC '22, pages 1373-1381, New York, NY, USA, May 2022. Association for Computing Machinery.
  • X. Song, J. Qin, Q. Ren, and J. Zheng. Igan: A collaborative filtering model based on improved generative adversarial networks for recommendation. Engineering Applications of Artificial Intelligence, 124:106569, Sep. 2023.
  • Honglong Chen, ShuaiWang, Nan Jiang, Zhe Li, Na Yan, and Leyi Shi. Trust-aware generative adversarial network with recurrent neural network for recommender systems. International Journal of Intelligent Systems, 36(2):778-795, 2021.

Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks

Year 2023, , 35 - 45, 29.01.2024
https://doi.org/10.53508/ijiam.1406498

Abstract

Generative Adversarial Networks (GANs) have become influential in reshaping artificial intelligence, spanning image generation, text synthesis, and music composition. As researchers increasingly integrate GANs into recommendation systems, the imperative to enhance recommendation quality propels this exploration. This article critically examines the current landscape of GAN incorporation in recommendation systems, identifying a fundamental problem: persistent challenges in training stability, mode collapse, scalability, and data privacy concerns. The central issue revolves around effectively utilizing GANs to craft personalized recommendations. Recognizing the significance of overcoming challenges like training instability and mode collapse, this study proposes a solution through the application of conditional GANs. Leveraging user demographics, browsing history, and item attributes, conditional GANs tailor recommendations to individual preferences, addressing the identified problems. To surmount these challenges, ongoing research endeavors diligently aim not only to overcome hurdles but also to enhance the stability and performance of GANs within recommendation systems. This article serves as a comprehensive guide, spotlighting the current state of GANs in recommendation systems, presenting potential solutions, and offering insights into the evolving landscape of research and development in this dynamic field.

References

  • M. Gao, J. Zhang, J. Yu, J. Li, J.Wen, and Q. Xiong. Recommender systems based on generative adversarial networks: A problem-driven perspective. Information Sciences, 546:1166-1185, Feb. 2021.
  • M. Al-Ghossein. Context-aware recommender systems for real-world applications. PhD thesis, Universit Paris Saclay (COmUE), 2019.
  • A. Banerjee, P. Banik, and W. Wrndl. A review on individual and multistakeholder fairness in tourism recommender systems. Front Big Data, 6:1168692, May 2023.
  • D. Kotkov, J. A. Konstan, Q. Zhao, and J. Veijalainen. Investigating serendipity in recommender systems based on real user feedback. In Proceedings of the 33rd Annual ACM Symposium on Applied Computing, SAC '18, pages 1341-1350, New York, NY, USA, Apr. 2018. Association for Computing Machinery.
  • I. Goodfellow et al. Generative adversarial nets. In Advances in Neural Information Processing Systems. Curran Associates, Inc., 2014.
  • D. Saxena and J. Cao. Generative adversarial networks (gans): Challenges, solutions, and future directions. ACM Comput. Surv., 54(3):1-42, Apr. 2022.
  • S. Kumar and M. D. Gupta. c+GAN: Complementary fashion item recommendation. arXiv, Jun. 2019.
  • Xinshi Chen, Shuang Li, Hui Li, Shaohua Jiang, Yuan Qi, and Le Song. Generative adversarial user model for reinforcement learning based recommendation system. In Kamalika Chaudhuri and Ruslan Salakhutdinov, editors, Proceedings of the 36th International Conference on Machine Learning, volume 97 of Proceedings of Machine Learning Research, pages 1052-1061. PMLR, 09-15 Jun 2019.
  • W. Shafqat and Y.-C. Byun. A hybrid gan-based approach to solve imbalanced data problem in recommendation systems. IEEE Access, 10:11036-11047, 2022.
  • J. Bobadilla, A. Gutirrez, R. Yera, and L. Martnez. Creating synthetic datasets for collaborative filtering recommender systems using generative adversarial networks. arXiv, Mar. 2023.
  • E. E. Stephy and M. Rajeswari. Empowering tourists with context-aware recommendations using gan. In 2023 Second International Conference on Electronics and Renewable Systems (ICEARS), pages 1444-1449, Mar. 2023.
  • T. Sasagawa, S. Kawai, and H. Nobuhara. Recommendation system based on generative adversarial network with graph convolutional layers. JACIII, 25(4):389-396, Jul. 2021.
  • R. Yin, K. Li, J. Lu, and G. Zhang. Rsygan: Generative adversarial network for recommender systems. In 2019 International Joint Conference on Neural Networks (IJCNN), pages 1-7, Jul. 2019.
  • J. Wen, B.-Y. Chen, C.-D. Wang, and Z. Tian. Prgan: Personalized recommendation with conditional generative adversarial networks. In 2021 IEEE International Conference on Data Mining (ICDM), pages 729-738, Dec. 2021.
  • E. Dervishaj and P. Cremonesi. Gan-based matrix factorization for recommender systems. In Proceedings of the 37th ACM/SIGAPP Symposium on Applied Computing, SAC '22, pages 1373-1381, New York, NY, USA, May 2022. Association for Computing Machinery.
  • X. Song, J. Qin, Q. Ren, and J. Zheng. Igan: A collaborative filtering model based on improved generative adversarial networks for recommendation. Engineering Applications of Artificial Intelligence, 124:106569, Sep. 2023.
  • Honglong Chen, ShuaiWang, Nan Jiang, Zhe Li, Na Yan, and Leyi Shi. Trust-aware generative adversarial network with recurrent neural network for recommender systems. International Journal of Intelligent Systems, 36(2):778-795, 2021.
There are 17 citations in total.

Details

Primary Language English
Subjects Artificial Intelligence (Other)
Journal Section Articles
Authors

Naouel Manaa

Hassina Seridi

Mohamed Said Mehdi Mendjel

Early Pub Date January 29, 2024
Publication Date January 29, 2024
Submission Date December 18, 2023
Acceptance Date January 22, 2024
Published in Issue Year 2023

Cite

APA Manaa, N., Seridi, H., & Mendjel, M. S. M. (2024). Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks. International Journal of Informatics and Applied Mathematics, 6(2), 35-45. https://doi.org/10.53508/ijiam.1406498
AMA Manaa N, Seridi H, Mendjel MSM. Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks. IJIAM. January 2024;6(2):35-45. doi:10.53508/ijiam.1406498
Chicago Manaa, Naouel, Hassina Seridi, and Mohamed Said Mehdi Mendjel. “Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks”. International Journal of Informatics and Applied Mathematics 6, no. 2 (January 2024): 35-45. https://doi.org/10.53508/ijiam.1406498.
EndNote Manaa N, Seridi H, Mendjel MSM (January 1, 2024) Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks. International Journal of Informatics and Applied Mathematics 6 2 35–45.
IEEE N. Manaa, H. Seridi, and M. S. M. Mendjel, “Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks”, IJIAM, vol. 6, no. 2, pp. 35–45, 2024, doi: 10.53508/ijiam.1406498.
ISNAD Manaa, Naouel et al. “Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks”. International Journal of Informatics and Applied Mathematics 6/2 (January 2024), 35-45. https://doi.org/10.53508/ijiam.1406498.
JAMA Manaa N, Seridi H, Mendjel MSM. Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks. IJIAM. 2024;6:35–45.
MLA Manaa, Naouel et al. “Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks”. International Journal of Informatics and Applied Mathematics, vol. 6, no. 2, 2024, pp. 35-45, doi:10.53508/ijiam.1406498.
Vancouver Manaa N, Seridi H, Mendjel MSM. Advancements in Recommender Systems Through the Integration of Generative Adversarial Networks. IJIAM. 2024;6(2):35-4.

International Journal of Informatics and Applied Mathematics