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Data Labeling Using Unsupervised Cascaded Pre-training with Fused Multi-port Data for Optical Failure Management

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Abstract

We propose an unsupervised cascaded pre-training data labeling method that considers the intrinsic correlation of multi-port data, and verifies the scheme validity in failure prediction using real multi-port data from optical networks.

© 2024 The Author(s)

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