TY - GEN
T1 - Federated Data Analytics with Differentially Private Density Estimation Model
AU - Wang, Jiayi
AU - Cao, Lei
AU - Chai, Chengliang
AU - Li, Guoliang
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - Federated data analytics, aimed at extracting in-sights from decentralized private data while preserving privacy, is crucial for organizations holding sensitive data. Existing approaches, such as output perturbation that adds noise to query results based on differential privacy, often suffer from degraded accuracy due to cumulative privacy budget consumption. In this paper, we introduce ADAPT, a novel framework that addresses this problem by training a privacy-preserving density model over decentralized data. Unlike traditional methods, ADAPT avoids accessing raw data when answering queries, thereby avoiding additional privacy leakage. We tackle the technical challenges raised by privacy-preserving federated data analytics, including parameter misalignment and distribution discrepancy, through innovative techniques of pre-alignment of network parameters and fine-tuning towards accurate data distributions. Directly using the density model, ADAPT accurately infers the results of a wide range of analytical queries. Extensive experiments demonstrate that ADAPT outperforms existing methods in terms of accuracy. Notably, for answering 8,000 analytical queries, ADAPT reduces the median relative error from over 103 to less than 6%. Moreover, it achieves high accuracy comparable to centralized differential privacy training, demonstrating its effectiveness in practical federated data analytics scenarios.
AB - Federated data analytics, aimed at extracting in-sights from decentralized private data while preserving privacy, is crucial for organizations holding sensitive data. Existing approaches, such as output perturbation that adds noise to query results based on differential privacy, often suffer from degraded accuracy due to cumulative privacy budget consumption. In this paper, we introduce ADAPT, a novel framework that addresses this problem by training a privacy-preserving density model over decentralized data. Unlike traditional methods, ADAPT avoids accessing raw data when answering queries, thereby avoiding additional privacy leakage. We tackle the technical challenges raised by privacy-preserving federated data analytics, including parameter misalignment and distribution discrepancy, through innovative techniques of pre-alignment of network parameters and fine-tuning towards accurate data distributions. Directly using the density model, ADAPT accurately infers the results of a wide range of analytical queries. Extensive experiments demonstrate that ADAPT outperforms existing methods in terms of accuracy. Notably, for answering 8,000 analytical queries, ADAPT reduces the median relative error from over 103 to less than 6%. Moreover, it achieves high accuracy comparable to centralized differential privacy training, demonstrating its effectiveness in practical federated data analytics scenarios.
KW - data analytics
KW - federated learning
UR - http://www.scopus.com/pages/publications/105015369839
U2 - 10.1109/ICDE65448.2025.00208
DO - 10.1109/ICDE65448.2025.00208
M3 - Conference contribution
AN - SCOPUS:105015369839
T3 - Proceedings - International Conference on Data Engineering
SP - 2768
EP - 2781
BT - Proceedings - 2025 IEEE 41st International Conference on Data Engineering, ICDE 2025
PB - IEEE Computer Society
T2 - 41st IEEE International Conference on Data Engineering, ICDE 2025
Y2 - 19 May 2025 through 23 May 2025
ER -