Publication | Open Access
Deep Neural Network-Aided Soft-Demapping in Coherent Optical Systems: Regression Versus Classification
21
Citations
42
References
2022
Year
EngineeringMachine LearningRecurrent NnsOptical ComputingCoherent Optical SystemsChannel Capacity EstimationData ScienceOptical PropertiesAdaptive ModulationOptical SystemsInformation Theory PerspectivePhotonicsCross-entropy Loss FunctionInformation TheoryChannel EqualizationComputer ScienceDeep LearningRegression Versus ClassificationSignal ProcessingOptical Information ProcessingChannel Estimation
We examine here what type of predictive modelling, classification, or regression, using neural networks (NN), fits better the task of soft-demapping based post-processing in coherent optical communications, where the transmission channel is nonlinear and dispersive. For the first time, we present possible drawbacks in using each type of predictive task in a machine learning context, considering the nonlinear coherent optical channel equalization/soft-demapping problem. We study two types of equalizers based on the feed-forward and recurrent NNs, for several transmission scenarios, in linear and nonlinear regimes of the optical channel. We point out that even though from the information theory perspective the cross-entropy loss (classification) is the most suitable option for our problem, the NN models based on the cross-entropy loss function can severely suffer from learning problems. The latter translates into the fact that regression-based learning is typically superior in terms of delivering higher Q-factor and achievable information rates. In short, we show by empirical evidence that loss functions based on cross-entropy may not be necessarily the most suitable option for training communication systems in practical scenarios when overfitting- and vanishing gradients-related problems come into play.
| Year | Citations | |
|---|---|---|
Page 1
Page 1