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Open AccessJournal ArticleDOI

Supervised Learning With First-to-Spike Decoding in Multilayer Spiking Neural Networks.

TLDR
In this paper, the authors propose a supervised learning method that can train multilayer spiking neural networks to solve classification problems based on a rapid, first-to-spike decoding strategy.
Abstract
Experimental studies support the notion of spike-based neuronal information processing in the brain, with neural circuits exhibiting a wide range of temporally-based coding strategies to rapidly and efficiently represent sensory stimuli. Accordingly, it would be desirable to apply spike-based computation to tackling real-world challenges, and in particular transferring such theory to neuromorphic systems for low-power embedded applications. Motivated by this, we propose a new supervised learning method that can train multilayer spiking neural networks to solve classification problems based on a rapid, first-to-spike decoding strategy. The proposed learning rule supports multiple spikes fired by stochastic hidden neurons, and yet is stable by relying on first-spike responses generated by a deterministic output layer. In addition to this, we also explore several distinct, spike-based encoding strategies in order to form compact representations of presented input data. We demonstrate the classification performance of the learning rule as applied to several benchmark datasets, including MNIST. The learning rule is capable of generalising from the data, and is successful even when used with constrained network architectures containing few input and hidden layer neurons. Furthermore, we highlight a novel encoding strategy, termed 'scanline encoding', that can transform image data into compact spatiotemporal patterns for subsequent network processing. Designing constrained, but optimised, network structures and performing input dimensionality reduction has strong implications for neuromorphic applications.

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Citations
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Journal ArticleDOI

Online spike-based recognition of digits with ultrafast microlaser neurons

TL;DR: In this article , numerical simulations of different algorithms that utilize ultrafast photonic spiking neurons as receptive fields to allow for image recognition without an offline computing step are presented, and the merits of event, spike-time and rank-order based algorithms adapted to this system.
Posted Content

Linear Constraints Learning for Spiking Neurons.

TL;DR: In this paper, a new supervised learning algorithm is proposed to train spiking neural networks for classification, which overcomes a limitation of existing multi-spike learning methods: it solves the problem of interference between interacting output spikes during a learning trial.
References
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Journal ArticleDOI

Optimal spike-timing-dependent plasticity for precise action potential firing in supervised learning

TL;DR: In this article, the authors use a supervised learning paradigm to derive a synaptic update rule that optimizes by gradient ascent the likelihood of postsynaptic firing at one or several desired firing times.
Journal ArticleDOI

Event-driven contrastive divergence for spiking neuromorphic systems

TL;DR: This work presents an event-driven variation of CD to train a RBM constructed with Integrate & Fire neurons, that is constrained by the limitations of existing and near future neuromorphic hardware platforms, and contributes to a machine learning-driven approach for synthesizing networks of spiking neurons capable of carrying out practical, high-level functionality.
Journal ArticleDOI

A gradient descent rule for spiking neurons emitting multiple spikes

TL;DR: A supervised learning rule for Spiking Neural Networks (SNNs) is presented that can cope with neurons that spike multiple times and is successfully tested on a classification task of Poisson spike trains.
Journal ArticleDOI

The chronotron: a neuron that learns to fire temporally precise spike patterns.

Răzvan V. Florian
- 06 Aug 2012 - 
TL;DR: This work introduces two new supervised learning rules for spiking neurons with temporal coding of information (chronotrons), one that provides high memory capacity (E-learning), and one that has a higher biological plausibility (I-learning).
Journal ArticleDOI

Precise-Spike-Driven Synaptic Plasticity: Learning Hetero-Association of Spatiotemporal Spike Patterns

TL;DR: Experimental results show that the PSD rule is capable of spatiotemporal pattern classification, and can even outperform a well studied benchmark algorithm with the proposed relative confidence criterion.
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