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NDRAM: Nonlinear Dynamic Recurrent Associative Memory for Learning Bipolar and Nonbipolar Correlated Patterns
54
Citations
13
References
2005
Year
EngineeringMachine LearningSequential LearningRecurrent Neural NetworkSocial SciencesSpurious AttractorsMemoryLearning BipolarNonbipolar Correlated PatternsNeurocomputersNonlinear Time SeriesBipolar AttractorsMemory SystemNonbipolar AttractorsComputer ScienceAssociative Memory (Psychology)Computational NeuroscienceNeuronal NetworkNeuroscienceBrain-like ComputingAttractor
This paper presents a new unsupervised attractor neural network, which, contrary to optimal linear associative memory models, is able to develop nonbipolar attractors as well as bipolar attractors. Moreover, the model is able to develop less spurious attractors and has a better recall performance under random noise than any other Hopfield type neural network. Those performances are obtained by a simple Hebbian/anti-Hebbian online learning rule that directly incorporates feedback from a specific nonlinear transmission rule. Several computer simulations show the model's distinguishing properties.
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