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Unsupervised Feature Learning With Winner-Takes-All Based STDP

机译:基于胜者通吃的STDP的无监督特征学习

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摘要

We present a novel strategy for unsupervised feature learning in image applications inspired by the Spike-Timing-Dependent-Plasticity (STDP) biological learning rule. We show equivalence between rank order coding Leaky-Integrate-and-Fire neurons and ReLU artificial neurons when applied to non-temporal data. We apply this to images using rank-order coding, which allows us to perform a full network simulation with a single feed-forward pass using GPU hardware. Next we introduce a binary STDP learning rule compatible with training on batches of images. Two mechanisms to stabilize the training are also presented : a Winner-Takes-All (WTA) framework which selects the most relevant patches to learn from along the spatial dimensions, and a simple feature-wise normalization as homeostatic process. This learning process allows us to train multi-layer architectures of convolutional sparse features. We apply our method to extract features from the MNIST, ETH80, CIFAR-10, and STL-10 datasets and show that these features are relevant for classification. We finally compare these results with several other state of the art unsupervised learning methods.
机译:我们提出了一种新的策略,用于图像应用中不受监督的特征学习,该方法受Spike-Timing-Dependent-Plasticity(STDP)生物学习规则的启发。当应用于非时间数据时,我们显示了等级排序编码泄漏集成和发射神经元与ReLU人工神经元之间的等效性。我们使用秩编码将其应用于图像,这使我们能够使用GPU硬件通过一次前馈传递执行完整的网络仿真。接下来,我们介绍一种二进制STDP学习规则,该规则与批量图像训练兼容。还提出了两种稳定训练的机制:一个Winner-Takes-All(WTA)框架,该框架选择最相关的补丁以沿空间维度学习,以及一个简单的按功能归一化的稳态过程。这种学习过程使我们能够训练卷积稀疏特征的多层体系结构。我们应用我们的方法从MNIST,ETH80,CIFAR-10和STL-10数据集中提取特征,并表明这些特征与分类有关。最后,我们将这些结果与其他几种无监督学习方法进行了比较。

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