Shuffling Recurrent Neural Networks
Michael Rotman, Lior Wolf
Abstract
We propose a novel recurrent neural network model, where the hidden state hₜ is obtained by permuting the vector elements of the previous hidden state hₜ₋₁ and adding the output of a learned function β(xₜ) of the input xₜ at time t. In our model, the prediction is given by a second learned function, which is applied to the hidden state s(hₜ). The method is easy to implement, extremely efficient, and does not suffer from vanishing nor exploding gradients. In an extensive set of experiments, the method shows competitive results, in comparison to the leading literature baselines. We share our implementation at https://github.com/rotmanmi/SRNN.
Topics & Concepts
ShufflingComputer scienceArtificial neural networkSet (abstract data type)State (computer science)Function (biology)Recurrent neural networkArtificial intelligenceState vectorEcho state networkAlgorithmPattern recognition (psychology)Machine learningBiologyPhysicsEvolutionary biologyClassical mechanicsProgramming languageDomain Adaptation and Few-Shot LearningMachine Learning and ELMNeural Networks and Applications