4.7 Article

Federated conditional generative adversarial nets imputation method for air quality missing data

期刊

KNOWLEDGE-BASED SYSTEMS
卷 228, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.knosys.2021.107261

关键词

Air pollutants; Conditional GAN imputation; Federated learning; Privacy-preserving machine learning

资金

  1. National key RD program [2018AAA0100800]
  2. Key Research and Development Program of Jiangsu [BK20192004B, BE2018004]
  3. Guangdong Forestry Science and Tech-nology Innovation Project [2020KJCX005]
  4. International Cooperation and Exchanges of Changzhou [CZ20200035]

向作者/读者索取更多资源

Air quality is a major global concern, leading to the deployment of intelligent monitoring networks in various places. However, these networks often have missing data, posing challenges for air quality studies. The use of generative adversarial networks (GAN) has shown promising results for data imputation in air quality monitoring, especially when combining data from different owners without sharing detailed information. Results from a federated GAN method show improved model performance and stability across collaborating participants.
The air quality is a topic of extreme concern that attracts a lot of attention in the world. Many intel-ligent air quality monitoring networks have been deployed in various places, especially in big cities. These monitoring networks collect air quality data with some missing data for some reasons which pose an obstacle for air quality publishing and studies. Generative adversarial nets (GAN) methods have achieved state-of-the-art performance in missing data imputation. GAN-based imputation method needs enough training data while one monitoring network has just a few and poor quality monitoring data and these data sets do not meet the independent identical distribution (IID) condition. Therefore, one monitoring network side needs to utilize more monitoring data from other sides as far as possible. However, in the real world, these air quality monitoring networks are owned by different organizations - companies, the government even some secret units. Many of them cannot share detailed monitoring data due to security, privacy, and industrial competition. In this paper, it is the first time to propose a conditional GAN imputation method under a federated learning framework to solve the data sets that come from diverse data-owners without sharing. Furthermore, we improve the vanilla conditional GAN performance with Wasserstein distance and Hint masktrick. The experimental results show that our GAN-based imputation methods can achieve the best performance. And our federated GAN imputation method outperforms the GAN imputation method trained locally for each participant which means our imputation model can work. Our proposed federated GAN method can benefit model quality by increasing access to air quality data through private multi-institutional collaborations. We further investigate the effects of data geographical distribution across collaborating participants on model quality and, interestingly, we find that the GAN training process with a federated learning framework performs more stable. (C) 2021 Elsevier B.V. All rights reserved.

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