SAFETYLIT WEEKLY UPDATE

We compile citations and summaries of about 400 new articles every week.
RSS Feed

HELP: Tutorials | FAQ
CONTACT US: Contact info

Search Results

Journal Article

Citation

Zhang Z, He N, Li D, Gao H, Gao T, Zhou C. J. Saf. Sci. Resil. 2022; 3(1): 15-23.

Copyright

(Copyright © 2022, KeAi Communications, Publisher Elsevier Publishing)

DOI

10.1016/j.jnlssr.2021.10.007

PMID

unavailable

Abstract

Social media analytics have played an important role in disaster identification. Recent advances in deep learning (DL) technologies have been applied to design disaster classification models. However, the DL-based models are hindered by insufficient training samples, because data collection and labeling are very expensive and time-consuming. To solve this issue, a privacy-preserving federated transfer learning approach for disaster classification (FedTL) is proposed, which can allow distributed social computing nodes to collaboratively train a comprehensive model. In the FedTL, Paillier homomorphic encryption method is used to protect the social computing nodes' data privacy. In particular, the transfer learning technology is adopted as a novel application to reduce the computation and communication costs in the federated learning system. The FedTL is verified by a real disaster image dataset collected from social networks. Theoretical analyses and experiment results show that the FedTL is effective, secure, efficient. In addition, the FedTL is highly extensible and can be easily applied in other transfer learning models.


Language: en

Keywords

Disaster classification; Federated learning; Privacy-preserving; Social computing; Transfer learning

NEW SEARCH


All SafetyLit records are available for automatic download to Zotero & Mendeley
Print