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Diagnosing Vanishing Gradients in RNNs

#machine learning #deep learning #debugging

Identify and propose solutions for vanishing gradients in deep recurrent networks.

You are training a deep Recurrent Neural Network (RNN) for long-sequence time-series prediction, but the model is suffering from vanishing gradients, preventing it from learning long-term dependencies. Analyze the mathematical reasons behind this phenomenon in the context of backpropagation through time (BPTT) and propose three distinct architectural modifications (e.g., specific gating mechanisms or regularization techniques) to resolve it.