The sTM model is extended with sequential population activations to encode element durations across timescales and uses oscillatory inputs as a clock signal to modulate replay speed in spiking networks.
Unsupervised online learning of complex sequences in spiking neuronal networks
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Learning sequence timing and control of replay speed in networks of spiking neurons
The sTM model is extended with sequential population activations to encode element durations across timescales and uses oscillatory inputs as a clock signal to modulate replay speed in spiking networks.
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