This letter presents a spike-based model that employs neurons with functionally distinct dendritic compartments for classifying high-dimensional binary patterns. The synaptic inputs arriving on each dendritic subunit are nonlinearly processed before being linearly integrated at the soma, giving the neuron the capacity to perform a large number of input-output mappings. The model uses sparse synaptic connectivity, where each synapse takes a binary value. The optimal connection pattern of a neuron is learned by using a simple hardware-friendly, margin-enhancing learning algorithm inspired by the mechanism of structural plasticity in biological neurons. The learning algorithm groups correlated synaptic inputs on the same dendritic branch. Sinc...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
In this paper, we discuss the nonlinear computational power provided by dendrites in biological and ...
Synaptic plasticity is thought to be the principal neuronal mechanism underlying learning. Models of...
The development of power-efficient neuromorphic devices presents the challenge of designing spike pa...
There has been a lack of progress in developing spiking neuron models for pattern classification, wh...
Large-scale spiking neural networks (SNN) are typically implemented on the chip by using mixed analo...
We present an architecture of a spike based multiclass classifier using neurons with non-linear dend...
This article introduces a novel multi-layer Winner- Take-All (ML-WTA) spiking neural network (SNN) a...
The discovery of binary dendritic events such as local NMDA spikes in dendritic subbranches led to t...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...
In this paper, we propose a novel winner-take-all (WTA) architecture employing neurons with nonlinea...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
Synaptic clustering on neuronal dendrites has been hypothesized to play an important role in impleme...
We demonstrate robust classification of correlated patterns of mean firing rates, using a VLSI netwo...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
In this paper, we discuss the nonlinear computational power provided by dendrites in biological and ...
Synaptic plasticity is thought to be the principal neuronal mechanism underlying learning. Models of...
The development of power-efficient neuromorphic devices presents the challenge of designing spike pa...
There has been a lack of progress in developing spiking neuron models for pattern classification, wh...
Large-scale spiking neural networks (SNN) are typically implemented on the chip by using mixed analo...
We present an architecture of a spike based multiclass classifier using neurons with non-linear dend...
This article introduces a novel multi-layer Winner- Take-All (ML-WTA) spiking neural network (SNN) a...
The discovery of binary dendritic events such as local NMDA spikes in dendritic subbranches led to t...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...
In this paper, we propose a novel winner-take-all (WTA) architecture employing neurons with nonlinea...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
Synaptic clustering on neuronal dendrites has been hypothesized to play an important role in impleme...
We demonstrate robust classification of correlated patterns of mean firing rates, using a VLSI netwo...
This thesis addresses the problem of how the dendritic structure and other morphological properties ...
In this paper, we discuss the nonlinear computational power provided by dendrites in biological and ...
Synaptic plasticity is thought to be the principal neuronal mechanism underlying learning. Models of...