Dynamic Clustering in Federated Learning
December 07, 2020 ยท Declared Dead ยท ๐ ICC 2021 - IEEE International Conference on Communications
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Authors
Yeongwoo Kim, Ezeddin Al Hakim, Johan Haraldson, Henrik Eriksson, Josรฉ Mairton B. da Silva, Carlo Fischione
arXiv ID
2012.03788
Category
cs.LG: Machine Learning
Citations
83
Venue
ICC 2021 - IEEE International Conference on Communications
Last Checked
4 months ago
Abstract
In the resource management of wireless networks, Federated Learning has been used to predict handovers. However, non-independent and identically distributed data degrade the accuracy performance of such predictions. To overcome the problem, Federated Learning can leverage data clustering algorithms and build a machine learning model for each cluster. However, traditional data clustering algorithms, when applied to the handover prediction, exhibit three main limitations: the risk of data privacy breach, the fixed shape of clusters, and the non-adaptive number of clusters. To overcome these limitations, in this paper, we propose a three-phased data clustering algorithm, namely: generative adversarial network-based clustering, cluster calibration, and cluster division. We show that the generative adversarial network-based clustering preserves privacy. The cluster calibration deals with dynamic environments by modifying clusters. Moreover, the divisive clustering explores the different number of clusters by repeatedly selecting and dividing a cluster into multiple clusters. A baseline algorithm and our algorithm are tested on a time series forecasting task. We show that our algorithm improves the performance of forecasting models, including cellular network handover, by 43%.
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