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Open AccessJournal ArticleDOI

Deep learning in spiking neural networks

TLDR
The emerging picture is that SNNs still lag behind ANNs in terms of accuracy, but the gap is decreasing, and can even vanish on some tasks, while SNN's typically require many fewer operations and are the better candidates to process spatio-temporal data.
About
This article is published in Neural Networks.The article was published on 2019-03-01 and is currently open access. It has received 756 citations till now. The article focuses on the topics: Spiking neural network & Artificial neural network.

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Citations
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Surrogate Gradient Learning in Spiking Neural Networks: Bringing the Power of Gradient-based optimization to spiking neural networks

TL;DR: This article elucidates step-by-step the problems typically encountered when training SNNs and guides the reader through the key concepts of synaptic plasticity and data-driven learning in the spiking setting as well as introducing surrogate gradient methods, specifically, as a particularly flexible and efficient method to overcome the aforementioned challenges.
Journal ArticleDOI

Resistive switching materials for information processing

TL;DR: This Review surveys the four physical mechanisms that lead to resistive switching materials enable novel, in-memory information processing, which may resolve the von Neumann bottleneck and examines the device requirements for systems based on RSMs.
Journal ArticleDOI

Deep Learning With Spiking Neurons: Opportunities and Challenges.

TL;DR: This review addresses the opportunities that deep spiking networks offer and investigates in detail the challenges associated with training SNNs in a way that makes them competitive with conventional deep learning, but simultaneously allows for efficient mapping to hardware.
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Bridging Biological and Artificial Neural Networks with Emerging Neuromorphic Devices: Fundamentals, Progress, and Challenges.

TL;DR: A systematic overview of biological and artificial neural systems is given, along with their related critical mechanisms, and the existing challenges are highlighted to hopefully shed light on future research directions.
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EEG based multi-class seizure type classification using convolutional neural network and transfer learning

TL;DR: It can be concluded that the EEG based classification of seizure type using CNN model could be used in pre-surgical evaluation for treating patients with epilepsy.
References
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Convolutional neural network architectures for predicting DNA–protein binding

TL;DR: In this paper, the authors present a systematic exploration of CNN architectures for predicting DNA sequence binding using a large compendium of transcription factor datasets. And they find that adding convolutional kernels to a network is important for motif-based tasks.
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Bayesian Computation Emerges in Generic Cortical Microcircuits through Spike-Timing-Dependent Plasticity

TL;DR: The results suggest that the experimentally observed spontaneous activity and trial-to-trial variability of cortical neurons are essential features of their information processing capability, since their functional role is to represent probability distributions rather than static neural codes.
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Pharmacology and Nerve-endings (Walter Ernest Dixon Memorial Lecture): (Section of Therapeutics and Pharmacology)

TL;DR: It is shown that Langley and Anderson's evidence, long available, as to the kinds of peripheral efferent fibres which can replace one another in regeneration, can be summarized by the statement, that cholinergic can replaceCholinergic fibres, and that adrenergic can replaced adrenergic fibre; but that fibres of different chemical function cannot replace oneAnother.
Posted Content

Towards Biologically Plausible Deep Learning

TL;DR: The theory about the probabilistic interpretation of auto-encoders is extended to justify improved sampling schemes based on the generative interpretation of denoising auto- Encoder, and these ideas are validated on generative learning tasks.
Journal ArticleDOI

Competitive stdp-based spike pattern learning

TL;DR: These results illustrate how the brain could easily encode and decode information in the spike times, a theory referred to as temporal coding, and how STDP could play a key role by detecting repeating patterns and generating selective response to them.
Related Papers (5)
Trending Questions (1)
What is the relationship between spiking neural networks and neuromorphics?

The paper mentions that spiking neural networks (SNNs) are more biologically realistic than artificial neural networks (ANNs) and are the better candidates to process spatio-temporal data. Additionally, SNNs combined with bio-plausible local learning rules make it easier to build low-power, neuromorphic hardware. Therefore, the relationship between SNNs and neuromorphics is that SNNs are a suitable approach for implementing neuromorphic hardware.