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Digital Twins-Assisted Service Recommendation with Preference Prediction in 6G-Enabled Edge Computing

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Digital Twins-Assisted Service Recommendation with Preference Prediction in 6G-Enabled Edge Computing. / Liu, Guoqiang; Bilal, Muhammad; Xu, Xiaolong et al.
In: IEEE Communications Magazine, Vol. 63, No. 3, 31.03.2025, p. 54-60.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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Liu G, Bilal M, Xu X, Xia X. Digital Twins-Assisted Service Recommendation with Preference Prediction in 6G-Enabled Edge Computing. IEEE Communications Magazine. 2025 Mar 31;63(3):54-60. Epub 2024 Sept 27. doi: 10.1109/mcom.001.2300697

Author

Liu, Guoqiang ; Bilal, Muhammad ; Xu, Xiaolong et al. / Digital Twins-Assisted Service Recommendation with Preference Prediction in 6G-Enabled Edge Computing. In: IEEE Communications Magazine. 2025 ; Vol. 63, No. 3. pp. 54-60.

Bibtex

@article{c3683caeedd94b59a8175814520d11a4,
title = "Digital Twins-Assisted Service Recommendation with Preference Prediction in 6G-Enabled Edge Computing",
abstract = "With the advent of sixth generation (6G) communication systems, edge computing benefits from enhanced bandwidth and increased network throughput, further diminishing service latency. Against this background, 6G-enabled edge computing makes it possible for service recommendation to reach more precise user profiling and efficient personalization. However, existing service recommendation algorithms are limited to performing coarse-grained service preference prediction based on historical data within specific time periods, which is incompatible with high frequency of information updating of 6G networks. Fortunately, digital twins (DTs) can model complex service recommendation systems and facilitate prediction of user service preferences in real-time with simultaneous data interaction. To this end, a DTs-assisted service recommendation scheme with preference prediction in 6G-enabled edge computing, named DPSR, is proposed. Specifically, DPSR utilizes DTs to perform modeling of service recommendation problems and to continuously obtain user data in real-time. Subsequently, a lightweight time-series prediction model is deployed on the DTs to predict user service preferences, thereby identifying users with a higher likelihood of requesting services in the next moment. Finally, a collaborative filtering (CF) model is used to provide personalized service recommendations for these users. The effectiveness of the DPSR is demonstrated in the experimental section of this article.",
author = "Guoqiang Liu and Muhammad Bilal and Xiaolong Xu and Xiaoyu Xia",
year = "2025",
month = mar,
day = "31",
doi = "10.1109/mcom.001.2300697",
language = "English",
volume = "63",
pages = "54--60",
journal = "IEEE Communications Magazine",
issn = "0163-6804",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
number = "3",

}

RIS

TY - JOUR

T1 - Digital Twins-Assisted Service Recommendation with Preference Prediction in 6G-Enabled Edge Computing

AU - Liu, Guoqiang

AU - Bilal, Muhammad

AU - Xu, Xiaolong

AU - Xia, Xiaoyu

PY - 2025/3/31

Y1 - 2025/3/31

N2 - With the advent of sixth generation (6G) communication systems, edge computing benefits from enhanced bandwidth and increased network throughput, further diminishing service latency. Against this background, 6G-enabled edge computing makes it possible for service recommendation to reach more precise user profiling and efficient personalization. However, existing service recommendation algorithms are limited to performing coarse-grained service preference prediction based on historical data within specific time periods, which is incompatible with high frequency of information updating of 6G networks. Fortunately, digital twins (DTs) can model complex service recommendation systems and facilitate prediction of user service preferences in real-time with simultaneous data interaction. To this end, a DTs-assisted service recommendation scheme with preference prediction in 6G-enabled edge computing, named DPSR, is proposed. Specifically, DPSR utilizes DTs to perform modeling of service recommendation problems and to continuously obtain user data in real-time. Subsequently, a lightweight time-series prediction model is deployed on the DTs to predict user service preferences, thereby identifying users with a higher likelihood of requesting services in the next moment. Finally, a collaborative filtering (CF) model is used to provide personalized service recommendations for these users. The effectiveness of the DPSR is demonstrated in the experimental section of this article.

AB - With the advent of sixth generation (6G) communication systems, edge computing benefits from enhanced bandwidth and increased network throughput, further diminishing service latency. Against this background, 6G-enabled edge computing makes it possible for service recommendation to reach more precise user profiling and efficient personalization. However, existing service recommendation algorithms are limited to performing coarse-grained service preference prediction based on historical data within specific time periods, which is incompatible with high frequency of information updating of 6G networks. Fortunately, digital twins (DTs) can model complex service recommendation systems and facilitate prediction of user service preferences in real-time with simultaneous data interaction. To this end, a DTs-assisted service recommendation scheme with preference prediction in 6G-enabled edge computing, named DPSR, is proposed. Specifically, DPSR utilizes DTs to perform modeling of service recommendation problems and to continuously obtain user data in real-time. Subsequently, a lightweight time-series prediction model is deployed on the DTs to predict user service preferences, thereby identifying users with a higher likelihood of requesting services in the next moment. Finally, a collaborative filtering (CF) model is used to provide personalized service recommendations for these users. The effectiveness of the DPSR is demonstrated in the experimental section of this article.

U2 - 10.1109/mcom.001.2300697

DO - 10.1109/mcom.001.2300697

M3 - Journal article

VL - 63

SP - 54

EP - 60

JO - IEEE Communications Magazine

JF - IEEE Communications Magazine

SN - 0163-6804

IS - 3

ER -