Supervised Sequence Labelling with Recurrent Neural …
Recurrent neural networks are powerful sequence learners. They are able to incorporate context information in a exible way, and are robust to lo-calised distortions of the input data. These properties make them well suited to sequence labelling, where input sequences are transcribed with streams of labels.
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