Fed-STWave: A Privacy-Preserving Federated Taxi Demand Prediction Model

被引:0
|
作者
Zhang M. [1 ]
Li W. [1 ]
机构
[1] School of Cybersecurity, National Engineering Research Center of DBR, Beijing University of Posts and Telecommunications, Beijing
关键词
Accuracy; Data models; Data privacy; Federated Learning; Federated learning; Predictive models; Privacy Protection; Public transportation; Spatial-Temporal Graph Neural Network; Taxi Order Prediction; Training;
D O I
10.1109/JIOT.2024.3415644
中图分类号
学科分类号
摘要
With the proliferation of big data and advancements in intelligent transportation, taxi services have emerged as one of the primary commuting modes, resulting in a substantial influx of data related to taxi orders. Numerous researchers have proposed algorithms that leverage historical order data to model future demand, with spatio-temporal graph neural networks showcasing exceptional performance in predicting taxi demand. However, the sensitivity and high value associated with taxi order data contribute to the formation of “data silos” among different enterprises, impeding model optimization through data sharing. Moreover, existing graph-based federated models lack robust privacy protection measures during the initialization of the global model.To address this challenge, this paper introduces Fed-STWave, a federated privacy-preserving STWave model. We employ a generalized graph construction algorithm based on latitude and longitude coordinates to develop a prediction model using STWave. Subsequently, through federated learning, the model facilitates participants in collectively training a global model without divulging local data. Participants then engage in local training based on the global model to enhance prediction accuracy. Furthermore, homomorphic encryption is applied to secure data during model initialization and federated training, ensuring the privacy and security of participant data and models. Experimental results demonstrate that the proposed algorithm typically reduces the root mean square error (RMSE) for each participant by 5%-10%, compared to traditional local data training. Thus, under the premise of safeguarding participant data privacy, the algorithm presented in this paper partially mitigates the challenges associated with “data silos”. IEEE
引用
收藏
页码:1 / 1
相关论文
共 50 条
  • [31] Privacy-preserving federated learning on lattice quantization
    Zhang, Lingjie
    Zhang, Hai
    INTERNATIONAL JOURNAL OF WAVELETS MULTIRESOLUTION AND INFORMATION PROCESSING, 2023, 21 (06)
  • [32] Privacy-Preserving Federated Brain Tumour Segmentation
    Li, Wenqi
    Milletari, Fausto
    Xu, Daguang
    Rieke, Nicola
    Hancox, Jonny
    Zhu, Wentao
    Baust, Maximilian
    Cheng, Yan
    Ourselin, Sebastien
    Cardoso, M. Jorge
    Feng, Andrew
    MACHINE LEARNING IN MEDICAL IMAGING (MLMI 2019), 2019, 11861 : 133 - 141
  • [33] Privacy-Preserving Federated Singular Value Decomposition
    Liu, Bowen
    Pejo, Balazs
    Tang, Qiang
    APPLIED SCIENCES-BASEL, 2023, 13 (13):
  • [34] Privacy-preserving Heterogeneous Federated Transfer Learning
    Gao, Dashan
    Liu, Yang
    Huang, Anbu
    Ju, Ce
    Yu, Han
    Yang, Qiang
    2019 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2019, : 2552 - 2559
  • [35] A Personalized Privacy-Preserving Scheme for Federated Learning
    Li, Zhenyu
    2022 IEEE INTERNATIONAL CONFERENCE ON ELECTRICAL ENGINEERING, BIG DATA AND ALGORITHMS (EEBDA), 2022, : 1352 - 1356
  • [36] Privacy-preserving federated learning for radiotherapy applications
    Hayati, H.
    Heijmans, S.
    Persoon, L.
    Murguia, C.
    van de Wouw, N.
    RADIOTHERAPY AND ONCOLOGY, 2023, 182 : S238 - S240
  • [37] POSTER: Privacy-preserving Federated Active Learning
    Kurniawan, Hendra
    Mambo, Masahiro
    SCIENCE OF CYBER SECURITY, SCISEC 2022 WORKSHOPS, 2022, 1680 : 223 - 226
  • [38] AddShare: A Privacy-Preserving Approach for Federated Learning
    Asare, Bernard Atiemo
    Branco, Paula
    Kiringa, Iluju
    Yeap, Tet
    COMPUTER SECURITY. ESORICS 2023 INTERNATIONAL WORKSHOPS, PT I, 2024, 14398 : 299 - 309
  • [39] Privacy-Preserving Hierarchical Federated Recommendation Systems
    Chen, Yucheng
    Feng, Chenyuan
    Feng, Daquan
    IEEE COMMUNICATIONS LETTERS, 2023, 27 (05) : 1312 - 1316
  • [40] PPFLV: privacy-preserving federated learning with verifiability
    Zhou, Qun
    Shen, Wenting
    CLUSTER COMPUTING-THE JOURNAL OF NETWORKS SOFTWARE TOOLS AND APPLICATIONS, 2024, 27 (09): : 12727 - 12743