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Robust and Lightweight Data Aggregation With Histogram Estimation in Edge-Cloud Systems

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Robust and Lightweight Data Aggregation With Histogram Estimation in Edge-Cloud Systems. / Su, Yuan; Li, Jiliang; Li, Jiahui et al.
In: IEEE Transactions on Network Science and Engineering, Vol. 11, No. 3, 31.05.2024, p. 2864-2875.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Su, Y, Li, J, Li, J, Su, Z, Meng, W, Yin, H & Lu, R 2024, 'Robust and Lightweight Data Aggregation With Histogram Estimation in Edge-Cloud Systems', IEEE Transactions on Network Science and Engineering, vol. 11, no. 3, pp. 2864-2875. https://doi.org/10.1109/TNSE.2024.3352734

APA

Su, Y., Li, J., Li, J., Su, Z., Meng, W., Yin, H., & Lu, R. (2024). Robust and Lightweight Data Aggregation With Histogram Estimation in Edge-Cloud Systems. IEEE Transactions on Network Science and Engineering, 11(3), 2864-2875. https://doi.org/10.1109/TNSE.2024.3352734

Vancouver

Su Y, Li J, Li J, Su Z, Meng W, Yin H et al. Robust and Lightweight Data Aggregation With Histogram Estimation in Edge-Cloud Systems. IEEE Transactions on Network Science and Engineering. 2024 May 31;11(3):2864-2875. Epub 2024 Jan 11. doi: 10.1109/TNSE.2024.3352734

Author

Su, Yuan ; Li, Jiliang ; Li, Jiahui et al. / Robust and Lightweight Data Aggregation With Histogram Estimation in Edge-Cloud Systems. In: IEEE Transactions on Network Science and Engineering. 2024 ; Vol. 11, No. 3. pp. 2864-2875.

Bibtex

@article{e20e3a9f628d4d718126d3cbc5c8a971,
title = "Robust and Lightweight Data Aggregation With Histogram Estimation in Edge-Cloud Systems",
abstract = "Secure aggregation based on masked encryption is a crucial technique for data collection in the Internet of Things (IoT) as it employs a lightweight style to enable global data aggregation while protecting individual data. However, network instability makes the design of such schemes more complex as dropout-resiliency is required, where the overheads substantially increase with growing dropped users. Moreover, existing methods primarily concentrate on aggregation and fail to support complex data analysis, such as histogram estimation. This paper proposes a Robust and Lightweight Data Aggregation (RLDA) scheme in edge-cloud systems. RLDA leverages the offline/online paradigm to achieve robust data aggregation, where edge nodes are introduced to assist verifiable key generation offline and data aggregation and key recovery online. RLDA decouples keys of dropped and surviving users so that it can reduce the overhead by always recovering the keys of surviving users rather than reconstructing the keys of growing dropped users. To achieve secure histogram estimation, we design two recoverable aggregation algorithms that support the transformation between vector and single value, and additionally support multidimensional data aggregation. We prove the security and dropout-resiliency of RLDA. The performance shows that RLDA significantly reduces the overhead with growing dropped users.",
author = "Yuan Su and Jiliang Li and Jiahui Li and Zhou Su and Weizhi Meng and Hao Yin and Rongxing Lu",
year = "2024",
month = may,
day = "31",
doi = "10.1109/TNSE.2024.3352734",
language = "English",
volume = "11",
pages = "2864--2875",
journal = "IEEE Transactions on Network Science and Engineering",
issn = "2327-4697",
publisher = "IEEE Computer Society Press",
number = "3",

}

RIS

TY - JOUR

T1 - Robust and Lightweight Data Aggregation With Histogram Estimation in Edge-Cloud Systems

AU - Su, Yuan

AU - Li, Jiliang

AU - Li, Jiahui

AU - Su, Zhou

AU - Meng, Weizhi

AU - Yin, Hao

AU - Lu, Rongxing

PY - 2024/5/31

Y1 - 2024/5/31

N2 - Secure aggregation based on masked encryption is a crucial technique for data collection in the Internet of Things (IoT) as it employs a lightweight style to enable global data aggregation while protecting individual data. However, network instability makes the design of such schemes more complex as dropout-resiliency is required, where the overheads substantially increase with growing dropped users. Moreover, existing methods primarily concentrate on aggregation and fail to support complex data analysis, such as histogram estimation. This paper proposes a Robust and Lightweight Data Aggregation (RLDA) scheme in edge-cloud systems. RLDA leverages the offline/online paradigm to achieve robust data aggregation, where edge nodes are introduced to assist verifiable key generation offline and data aggregation and key recovery online. RLDA decouples keys of dropped and surviving users so that it can reduce the overhead by always recovering the keys of surviving users rather than reconstructing the keys of growing dropped users. To achieve secure histogram estimation, we design two recoverable aggregation algorithms that support the transformation between vector and single value, and additionally support multidimensional data aggregation. We prove the security and dropout-resiliency of RLDA. The performance shows that RLDA significantly reduces the overhead with growing dropped users.

AB - Secure aggregation based on masked encryption is a crucial technique for data collection in the Internet of Things (IoT) as it employs a lightweight style to enable global data aggregation while protecting individual data. However, network instability makes the design of such schemes more complex as dropout-resiliency is required, where the overheads substantially increase with growing dropped users. Moreover, existing methods primarily concentrate on aggregation and fail to support complex data analysis, such as histogram estimation. This paper proposes a Robust and Lightweight Data Aggregation (RLDA) scheme in edge-cloud systems. RLDA leverages the offline/online paradigm to achieve robust data aggregation, where edge nodes are introduced to assist verifiable key generation offline and data aggregation and key recovery online. RLDA decouples keys of dropped and surviving users so that it can reduce the overhead by always recovering the keys of surviving users rather than reconstructing the keys of growing dropped users. To achieve secure histogram estimation, we design two recoverable aggregation algorithms that support the transformation between vector and single value, and additionally support multidimensional data aggregation. We prove the security and dropout-resiliency of RLDA. The performance shows that RLDA significantly reduces the overhead with growing dropped users.

U2 - 10.1109/TNSE.2024.3352734

DO - 10.1109/TNSE.2024.3352734

M3 - Journal article

VL - 11

SP - 2864

EP - 2875

JO - IEEE Transactions on Network Science and Engineering

JF - IEEE Transactions on Network Science and Engineering

SN - 2327-4697

IS - 3

ER -