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Simulation of bayesian learning and inference on distributed stochastic spiking neural networks

机译:分布式随机尖峰神经网络的贝叶斯学习与推理仿真

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The ability of neural networks to perform pattern recognition, classification and associative memory, is essential to applications such as image and speech recognition, natural language understanding, decision making etc. In spiking neural networks (SNNs), information is encoded as sparsely distributed train of spikes, which allows learning through the spike-timing dependent plasticity (STDP) property. SNNs can potentially achieve very large scale implementation and distributed learning due to the inherent asynchronous and sparse inter-neuron communications. In this work, we develop an efficient, scalable and flexible SNN simulator, which supports learning through STDP. The simulator is ideal for biologically inspired neuron models for computation but not for biologically realistic models. Bayesian neuron model for SNNs that is capable of online and fully-distributed STDP learning is introduced. The function of the simulator is validated using two networks representing two different applications from unsupervised feature extraction to inference based sentence construction.
机译:神经网络执行模式识别,分类和关联记忆的能力对于图像和语音识别,自然语言理解,决策制定等应用至关重要。在尖峰神经网络(SNN)中,信息被编码为稀疏分布的神经网络。尖峰,允许通过尖峰时序相关的可塑性(STDP)属性进行学习。由于固有的异步和稀疏的神经元间通信,SNN可以潜在地实现大规模实施和分布式学习。在这项工作中,我们开发了一种高效,可扩展且灵活的SNN模拟器,该模拟器支持通过STDP进行学习。该模拟器非常适合用于生物学启发的神经元模型进行计算,但不适用于生物学上逼真的模型。介绍了能够在线和完全分布式STDP学习的SNN的贝叶斯神经元模型。模拟器的功能使用两个网络进行了验证,该网络代表了从无监督特征提取到基于推理的句子构造的两种不同应用。

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