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GeCo: Classification Restricted Boltzmann Machine Hardware for On-Chip Learning

机译:GeCo:用于在线学习的分类受限玻尔兹曼机器硬件

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We present a Classification Restricted Boltzmann Machine (Class-RBM) hardware for embedded machines with on-chip learning capability. The RBM is a kind of the generative model, and has been used as one of the most popular feature extractors and image preprocessors. The ClassRBM is a variant of the RBM that is adapted to classification tasks. We propose the multi-Neuron-Per-Class (multi-NPC) voting scheme for improving accuracy of ClassRBM. We also show that the Contrastive Divergence (CD), which is one of the most popular algorithms to train RBM, has limitations in multi-NPC ClassRBM learning and propose a modified CD algorithm to overcome the limitation. Experimental results on FPGA flatform for MNIST datasets confirm that classification accuracy of the proposed algorithm is ~ 2.12% higher than the conventional CD.
机译:我们为具有片上学习功能的嵌入式计算机提供了分类受限的玻尔兹曼机器(Class-RBM)硬件。 RBM是一种生成模型,已被用作最受欢迎的特征提取器和图像预处理器之一。 ClassRBM是RBM的一种变体,适用于分类任务。为了提高ClassRBM的准确性,我们提出了基于每类的多Neuron(multi-NPC)投票方案。我们还表明,Contrastive Divergence(CD)是训练RBM的最流行算法之一,在多NPC ClassRBM学习中有局限性,并提出了一种改进的CD算法来克服该局限性。针对MNIST数据集的FPGA平台上的实验结果证实,该算法的分类精度比传统CD高约2.12%。

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