Geometric Constellation Shaping for Fiber Optic Communication Systems via End-to-end Learning

In this paper, an unsupervised machine learning method for geometric constellation shaping is investigated. By embedding a differentiable fiber channel model within two neural networks, the learning algorithm is optimizing for a geometric constellation shape... (read more)

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