Deep Clustering of Mobile Network Data with Sparse Autoencoders

NOMS(2020)

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摘要
Unsupervised machine learning methods, such as clustering algorithms could be powerful tools for automation. By simplifying data through structuring, these algorithms can help network management use-cases where autonomous agency or elevated levels of cognition is required. Recent developments in deep learning allow clustering algorithms to gain unprecedented insight into the data, creating meaningful clusters as a result. In this paper, we propose a Sparse Clustering Autoencoder, capable of autonomously encoding cell behavior into a graph-like representation we call Network State Transition Graphs. We compare our proposed algorithm against other deep learning-based clustering algorithms, and demonstrate its utility on data from a real, large-scale mobile network deployment.
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关键词
Clustering, Sparseness, Autoencoder, Deep Learning, Network Management Automation, Cognitive Autonomous Networks
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