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引用次数: 0

摘要

基于深度架构的深度简要网(Deep Brief Nets, dbn)通过叠加多个受限玻尔兹曼机(Restricted Boltzmann Machines, rbm)展示了其数据建模能力。然而,DBN采用多层结构,计算量大,收敛速度慢。这是因为预训练阶段通常以数据驱动的方式实现,附加到训练数据上的类信息仅用于微调。在本文中,我们的目标是将多层DBN简化为单层结构。在预训练过程中,我们使用类信息作为对隐藏层的约束。对于每个训练实例及其对应的类,将生成一个二值序列,以适应隐藏层的输出。我们在四个数据集上测试了我们的方法:基本、MNIST、基本负MNIST、旋转MNIST和矩形(高矩形与宽矩形)。结果表明,这种单层结构可以与三层DBN相媲美。
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Simplified learning with binary orthogonal constraints
Deep architecture based Deep Brief Nets (DBNs) has shown its data modelling power by stacking up several Restricted Boltzmann Machines (RBMs). However, the multiple-layer structure used in DBN brings expensive computation, and furthermore leads to slow convergence. This is because the pretraining stage is usually implemented in a data-driven way, and class information attached to the training data is only used for fine-tuning. In this paper, we aim to simplify a multiple-layer DBN to a one-layer structure. We use class information as a constraint to the hidden layer during pre-training. For each training instance and its corresponding class, a binary sequence will be generated in order to adapt the output of hidden layer. We test our approaches on four data sets: basic, MNIST, basic negative MNIST, rotation MNIST and rectangle (tall vs. wide rectangles). The obtained results show that the adapted one-layer structure can compete with a three-layer, DBN.
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