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A Multi-Modal Latent-Features based Service Recommendation System for the Social Internet of Things (2306.01163v2)

Published 1 Jun 2023 in cs.SI and cs.IR

Abstract: The Social Internet of Things (SIoT), is revolutionizing how we interact with our everyday lives. By adding the social dimension to connecting devices, the SIoT has the potential to drastically change the way we interact with smart devices. This connected infrastructure allows for unprecedented levels of convenience, automation, and access to information, allowing us to do more with less effort. However, this revolutionary new technology also brings an eager need for service recommendation systems. As the SIoT grows in scope and complexity, it becomes increasingly important for businesses and individuals, and SIoT objects alike to have reliable sources for products, services, and information that are tailored to their specific needs. Few works have been proposed to provide service recommendations for SIoT environments. However, these efforts have been confined to only focusing on modeling user-item interactions using contextual information, devices' SIoT relationships, and correlation social groups but these schemes do not account for latent semantic item-item structures underlying the sparse multi-modal contents in SIoT environment. In this paper, we propose a latent-based SIoT recommendation system that learns item-item structures and aggregates multiple modalities to obtain latent item graphs which are then used in graph convolutions to inject high-order affinities into item representations. Experiments showed that the proposed recommendation system outperformed state-of-the-art SIoT recommendation methods and validated its efficacy at mining latent relationships from multi-modal features.

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References (26)
  1. K. Ashton et al., “That ‘internet of things’ thing,” RFID journal, vol. 22, no. 7, pp. 97–114, 2009.
  2. S. Al-Sarawi, M. Anbar, R. Abdullah, and A. B. Al Hawari, “Internet of things market analysis forecasts, 2020–2030,” in 2020 Fourth World Conference on smart trends in systems, security and sustainability (WorldS4).   IEEE, 2020, pp. 449–453.
  3. V. K. Jones, “Voice-activated change: Marketing in the age of artificial intelligence and virtual assistants,” Journal of Brand Strategy, vol. 7, no. 3, pp. 233–245, 2018.
  4. J. Van Brummelen, M. O’Brien, D. Gruyer, and H. Najjaran, “Autonomous vehicle perception: The technology of today and tomorrow,” Transportation research part C: emerging technologies, vol. 89, pp. 384–406, 2018.
  5. L. Atzori, A. Iera, G. Morabito, and M. Nitti, “The social internet of things (siot)–when social networks meet the internet of things: Concept, architecture and network characterization,” Computer networks, vol. 56, no. 16, pp. 3594–3608, 2012.
  6. S. Dhelim, N. Aung, T. Kechadi, H. Ning, L. Chen, and A. Lakas, “Trust2Vec: Large-Scale IoT Trust Management System based on Signed Network Embeddings,” IEEE Internet of Things Journal, pp. 1–1, 2022. [Online]. Available: https://ieeexplore.ieee.org/document/9866814/
  7. N. Aung, S. Dhelim, L. Chen, A. Lakas, W. Zhang, H. Ning, S. Chaib, and M. T. Kechadi, “VeSoNet: Traffic-Aware Content Caching for Vehicular Social Networks Using Deep Reinforcement Learning,” IEEE Transactions on Intelligent Transportation Systems, pp. 1–12, 2023. [Online]. Available: https://ieeexplore.ieee.org/document/10070376/
  8. S. Shahab, P. Agarwal, T. Mufti, and A. J. Obaid, “Siot (social internet of things): a review,” ICT analysis and applications, pp. 289–297, 2022.
  9. K. O.-B. Obour Agyekum, Q. Xia, E. B. Sifah, J. Gao, H. Xia, X. Du, and M. Guizani, “A secured proxy-based data sharing module in iot environments using blockchain,” Sensors, vol. 19, no. 5, p. 1235, 2019.
  10. W. Wang, H. Ning, F. Shi, S. Dhelim, W. Zhang, and L. Chen, “A Survey of Hybrid Human-Artificial Intelligence for Social Computing,” IEEE Transactions on Human-Machine Systems, 2021.
  11. S. Dhelim, H. Ning, F. Farha, L. Chen, L. Atzori, and M. Daneshmand, “IoT-Enabled Social Relationships Meet Artificial Social Intelligence,” IEEE Internet of Things Journal, p. 1, 2021.
  12. D.-H. Kang, H.-S. Choi, S.-G. Choi, and W.-S. Rhee, “Srs: Social correlation group based recommender system for social iot environment,” International Journal of Contents, vol. 13, no. 1, pp. 53–61, 2017.
  13. Z. Sun, L. Han, W. Huang, X. Wang, X. Zeng, M. Wang, and H. Yan, “Recommender systems based on social networks,” Journal of Systems and Software, vol. 99, pp. 109–119, 2015.
  14. Y. Chen, M. Zhou, Z. Zheng, and D. Chen, “Time-aware smart object recommendation in social internet of things,” IEEE Internet of Things Journal, vol. 7, no. 3, pp. 2014–2027, 2019.
  15. A. Ben Sada, A. Naouri, A. Khelloufi, S. Dhelim, and H. Ning, “A Context-Aware Edge Computing Framework for Smart Internet of Things,” Future Internet, vol. 15, no. 5, p. 154, apr 2023. [Online]. Available: https://www.mdpi.com/1999-5903/15/5/154
  16. Y. Chen, Y. Tao, Z. Zheng, and D. Chen, “Graph-based service recommendation in social internet of things,” International Journal of Distributed Sensor Networks, vol. 17, no. 4, p. 15501477211009047, 2021.
  17. A. Khelloufi, H. Ning, S. Dhelim, T. Qiu, J. Ma, R. Huang, and L. Atzori, “A social-relationships-based service recommendation system for siot devices,” IEEE Internet of Things Journal, vol. 8, no. 3, pp. 1859–1870, 2020.
  18. J. Zhang, Y. Zhu, Q. Liu, S. Wu, S. Wang, and L. Wang, “Mining latent structures for multimedia recommendation,” in Proceedings of the 29th ACM International Conference on Multimedia, 2021, pp. 3872–3880.
  19. R. Pascanu, T. Mikolov, and Y. Bengio, “On the difficulty of training recurrent neural networks,” in International conference on machine learning.   Pmlr, 2013, pp. 1310–1318.
  20. S. Sharma, S. Sharma, and A. Athaiya, “Activation functions in neural networks,” Towards Data Sci, vol. 6, no. 12, pp. 310–316, 2017.
  21. X. He, K. Deng, X. Wang, Y. Li, Y. Zhang, and M. Wang, “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, 2020, pp. 639–648.
  22. J. Ni, J. Li, and J. McAuley, “Justifying recommendations using distantly-labeled reviews and fine-grained aspects,” in Proceedings of the 2019 conference on empirical methods in natural language processing and the 9th international joint conference on natural language processing (EMNLP-IJCNLP), 2019, pp. 188–197.
  23. H. Zhang, L. Zhu, L. Zhang, T. Dai, X. Feng, L. Zhang, K. Zhang, and Y. Yan, “Smart objects recommendation based on pre-training with attention and the thing–thing relationship in social internet of things,” Future Generation Computer Systems, vol. 129, pp. 347–357, 2022.
  24. Y. Koren, R. Bell, and C. Volinsky, “Matrix factorization techniques for recommender systems,” Computer, vol. 42, no. 8, pp. 30–37, 2009.
  25. L. Yao, Q. Z. Sheng, A. H. Ngu, and X. Li, “Things of interest recommendation by leveraging heterogeneous relations in the internet of things,” ACM Transactions on Internet Technology (TOIT), vol. 16, no. 2, pp. 1–25, 2016.
  26. H. Zhang, L. Zhu, T. Dai, L. Zhang, X. Feng, L. Zhang, and K. Zhang, “Smart object recommendation based on topic learning and joint features in the social internet of things,” Digital Communications and Networks, vol. 9, no. 1, pp. 22–32, 2023.
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