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RNN Problem
In an RNN model, predictions are only based on knowledge/features/inputs from previous nodes. However, information from the rest of the sentence might be useful in the previous step as well.
Example: In the following examples, name entity recognition of Teddy can be different based on information that come after 'Teddy".
He said, "Teddy Roosevelt was a great president" He said, "Teddy bear are on sale!"
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Data Science
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Applications of RNN
RNN Basic Structure
RNN Extensions and Types
Loss Function for RNN
RNNs(Recurrent Neural Networks) vs HMMs (Hidden Markov Models)
RNNs vs Feedforward Neural Networks
Hybrid of Convolutional and Recurrent Neural Network
Why is an RNN (Recurrent Neural Network) used for machine translation, say translating English to French? (Check all that apply.)
RNN Problem
Different types of RNN (in terms of input/output)
Long Term Dependencies Problem
Modeling Sequences Conditioned on Context with RNNs
Leaky Units and Other Strategies for Multiple Time Scales
Convolutional Recurrent Neural Network (CRNN)
Pooling Layer in RNN
Inability of RNNs to Carry Forward Critical Information
Stacked RNNs
Bidirectional RNNs