Publication | Closed Access
Learning Complex, Extended Sequences Using the Principle of History Compression
403
Citations
5
References
1992
Year
Incremental LearningEngineeringMachine LearningNeural Networks (Machine Learning)Sequential LearningRecurrent NetworksRecurrent Neural NetworkSocial SciencesLanguage ProcessingNatural Language ProcessingData ScienceData MiningPattern RecognitionHistory CompressionRecurrent NetsLanguage ModelsSequence ModellingKnowledge DiscoveryComputer ScienceNeural Networks (Computational Neuroscience)Data CompressionDeep Neural NetworksSingle Recurrent Net
Previous neural network learning algorithms for sequence processing are computationally expensive and perform poorly when it comes to long time lags. This paper first introduces a simple principle for reducing the descriptions of event sequences without loss of information. A consequence of this principle is that only unexpected inputs can be relevant. This insight leads to the construction of neural architectures that learn to “divide and conquer” by recursively decomposing sequences. I describe two architectures. The first functions as a self-organizing multilevel hierarchy of recurrent networks. The second, involving only two recurrent networks, tries to collapse a multilevel predictor hierarchy into a single recurrent net. Experiments show that the system can require less computation per time step and many fewer training sequences than conventional training algorithms for recurrent nets.
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