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Active vs Transfer Learning Approaches for QoT Estimation with Small Training Datasets

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Abstract

We compare the level of accuracy achieved by active learning and domain adaptation approaches for quality of transmission estimation of an unestablished lightpath, in presence of small-sized training datasets.

© 2020 The Author(s)

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