Distributed LSTM-Learning from Differentially Private Label Proportions

Data privacy and decentralised data collection has become more and more popular in recent years. In order to solve issues with privacy, communication bandwidth and learning from spatio-temporal data, we will propose two efficient models which use Differential Privacy and decentralized LSTM-Learning: One, in which a Long Short Term Memory (LSTM) model is learned for extracting local temporal node constraints and feeding them into a Dense-Layer (LabeIProportionToLocal). The other approach extends the first one by fetching histogram data from the neighbors and joining the information with the LSTM output (LabeIProportionToDense). For evaluation two popular datasets are used: Pems-Bay and METR-LA. Additionally, we provide an own dataset, which is based on LuST. The evaluation will show the tradeoff between performance and data privacy.

  • Published in:
    2022 IEEE International Conference on Data Mining Workshops (ICDMW)
  • Type:
    Inproceedings
  • Authors:
    Sachweh, Timon; Boiar, Daniel; Liebig, Thomas
  • Year:
    2022

Citation information

Sachweh, Timon; Boiar, Daniel; Liebig, Thomas: Distributed LSTM-Learning from Differentially Private Label Proportions, 2022 IEEE International Conference on Data Mining Workshops (ICDMW), 2022, https://ieeexplore.ieee.org/abstract/document/10031182, Sachweh.etal.2022a,

Associated Lamarr Researchers

Portrait of Timo Sachweh.

Timon Sachweh

Autor to the profile
lamarr institute person Liebig Thomas - Lamarr Institute for Machine Learning (ML) and Artificial Intelligence (AI)

Prof. Dr. Thomas Liebig

Principal Investigator Trustworthy AI to the profile