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Learning to classify complex patterns using a VLSI network of spiking neurons

Neural Information Processing Systems

We propose a compact, low power VLSI network of spiking neurons which can learn to classify complex patterns of mean firing rates on–line and in real–time. The network of integrate-and-fire neurons is connected by bistable synapses that can change their weight using a local spike–based plasticity mechanism. Learning is supervised by a teacher which provides an extra input to the output neurons during training. The synaptic weights are updated only if the current generated by the plastic synapses does not match the output desired by the teacher (as in the perceptron learning rule). We present experimental results that demonstrate how this VLSI network is able to robustly classify uncorrelated linearly separable spatial patterns of mean firing rates.


Learning to classify complex patterns using a VLSI network of spiking neurons

Mitra, Srinjoy, Indiveri, Giacomo, Fusi, Stefano

Neural Information Processing Systems

We propose a compact, low power VLSI network of spiking neurons which can learn to classify complex patterns of mean firing rates online and in real-time. The network of integrate-and-fire neurons is connected by bistable synapses that can change their weight using a local spike-based plasticity mechanism. Learning is supervised by a teacher which provides an extra input to the output neurons during training. The synaptic weights are updated only if the current generated by the plastic synapses does not match the output desired by the teacher (as in the perceptron learning rule). We present experimental results that demonstrate how this VLSI network is able to robustly classify uncorrelated linearly separable spatial patterns of mean firing rates.


Learning to classify complex patterns using a VLSI network of spiking neurons

Mitra, Srinjoy, Indiveri, Giacomo, Fusi, Stefano

Neural Information Processing Systems

We propose a compact, low power VLSI network of spiking neurons which can learn to classify complex patterns of mean firing rates online and in real-time. The network of integrate-and-fire neurons is connected by bistable synapses that can change their weight using a local spike-based plasticity mechanism. Learning is supervised by a teacher which provides an extra input to the output neurons during training. The synaptic weights are updated only if the current generated by the plastic synapses does not match the output desired by the teacher (as in the perceptron learning rule). We present experimental results that demonstrate how this VLSI network is able to robustly classify uncorrelated linearly separable spatial patterns of mean firing rates.


Learning to classify complex patterns using a VLSI network of spiking neurons

Mitra, Srinjoy, Indiveri, Giacomo, Fusi, Stefano

Neural Information Processing Systems

We propose a compact, low power VLSI network of spiking neurons which can learn to classify complex patterns of mean firing rates online and in real-time. The network of integrate-and-fire neurons is connected by bistable synapses that can change their weight using a local spike-based plasticity mechanism. Learning is supervised by a teacher which provides an extra input to the output neurons during training. The synaptic weights are updated only if the current generated by the plastic synapses does not match the output desired by the teacher (as in the perceptron learning rule). We present experimental results that demonstrate how this VLSI network is able to robustly classify uncorrelated linearly separable spatial patterns of mean firing rates.


Context dependent amplification of both rate and event-correlation in a VLSI network of spiking neurons

Chicca, Elisabetta, Indiveri, Giacomo, Douglas, Rodney J.

Neural Information Processing Systems

Cooperative competitive networks are believed to play a central role in cortical processing and have been shown to exhibit a wide set of useful computational properties. We propose a VLSI implementation of a spiking cooperative competitive networkand show how it can perform context dependent computation both in the mean firing rate domain and in spike timing correlation space. In the mean rate case the network amplifies the activity of neurons belonging to the selected stimulus and suppresses the activity of neurons receiving weaker stimuli. In the event correlation case, the recurrent network amplifies with a higher gain the correlation betweenneurons which receive highly correlated inputs while leaving the mean firing rate unaltered. We describe the network architecture and present experimental datademonstrating its context dependent computation capabilities.