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From statistical inference to a differential learning rule for stochastic neural networks

机译:从统计推断到随机神经网络的差分学习规则

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摘要

Stochastic neural networks are a prototypical computational device able to build a probabilistic representation of an ensemble of external stimuli. Building on the relationship between inference and learning, we derive a synaptic plasticity rule that relies only on delayed activity correlations, and that shows a number of remarkable features. Our delayed-correlations matching (DCM) rule satisfies some basic requirements for biological feasibility: finite and noisy afferent signals, Dale’s principle and asymmetry of synaptic connections, locality of the weight update computations. Nevertheless, the DCM rule is capable of storing a large, extensive number of patterns as attractors in a stochastic recurrent neural network, under general scenarios without requiring any modification: it can deal with correlated patterns, a broad range of architectures (with or without hidden neuronal states), one-shot learning with the palimpsest property, all the while avoiding the proliferation of spurious attractors. When hidden units are present, our learning rule can be employed to construct Boltzmann machine-like generative models, exploiting the addition of hidden neurons in feature extraction and classification tasks.
机译:随机神经网络是一种原型计算设备,能够建立一组外部刺激的概率表示。基于推理和学习之间的关系,我们得出了仅依赖于延迟活动相关性的突触可塑性规则,并且该规则显示出许多显着特征。我们的延迟相关匹配(DCM)规则满足了生物学可行性的一些基本要求:有限和嘈杂的传入信号,Dale的突触连接原理和不对称性,权重更新计算的局部性。尽管如此,DCM规则在一般情况下无需进行任何修改即可在随机的递归神经网络中将大量,大量的模式作为吸引子存储:它可以处理相关的模式,范围广泛的架构(有或没有隐藏神经元状态),具有最淡淡的特性的一次性学习,同时避免了伪造吸引子的扩散。当存在隐藏单元时,我们的学习规则可用于构建Boltzmann机器式生成模型,在特征提取和分类任务中利用隐藏神经元的添加。

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