Network Anomaly Detection Using Federated Deep Autoencoding Gaussian Mixture Model - Machine Learning for Networking
Conference Papers Year : 2020

Network Anomaly Detection Using Federated Deep Autoencoding Gaussian Mixture Model

Abstract

Deep autoencoding Gaussian mixture model (DAGMM) employs dimensionality reduction and density estimation and jointly optimizes them for unsupervised anomaly detection tasks. However, the absence of large amount of training data greatly compromises DAGMM’s performance. Due to rising concerns for privacy, a worse situation can be expected. By aggregating only parameters from local training on clients for obtaining knowledge from more private data, federated learning is proposed to enhance model performance. Meanwhile, privacy is properly protected. Inspired by the aforementioned, this paper presents a federated deep autoencoding Gaussian mixture model (FDAGMM) to improve the disappointing performance of DAGMM caused by limited data amount. The superiority of our proposed FDAGMM is empirically demonstrated with extensive experiments.
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Dates and versions

hal-03266470 , version 1 (21-06-2021)

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Yang Chen, Junzhe Zhang, Chai Kiat Yeo. Network Anomaly Detection Using Federated Deep Autoencoding Gaussian Mixture Model. 2nd International Conference on Machine Learning for Networking (MLN), Dec 2019, Paris, France. pp.1-14, ⟨10.1007/978-3-030-45778-5_1⟩. ⟨hal-03266470⟩
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