Publication | Closed Access
An Efficient Gradient-Based Algorithm for On-Line Training of Recurrent Network Trajectories
590
Citations
8
References
1990
Year
Novel VariantStructured PredictionSequence ModellingEngineeringMachine LearningRecurrent NetworksSequential LearningOn-line TrainingComputer EngineeringTemporal Pattern RecognitionEfficient Gradient-based AlgorithmComputer ScienceDeep LearningNeural Architecture SearchRecurrent Network TrajectoriesRecurrent Neural NetworkArbitrary Recurrent NetworksSpeech Recognition
A novel variant of the familiar backpropagation-through-time approach to training recurrent networks is described. This algorithm is intended to be used on arbitrary recurrent networks that run continually without ever being reset to an initial state, and it is specifically designed for computationally efficient computer implementation. This algorithm can be viewed as a cross between epochwise backpropagation through time, which is not appropriate for continually running networks, and the widely used on-line gradient approximation technique of truncated backpropagation through time.
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