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GENERATING AND MANAGING DEEP TENSOR NEURAL NETWORKS

机译:生成和管理深层张量神经网络

摘要

Techniques for generating and managing, including simulating and training, deep tensor neural networks are presented. A deep tensor neural network comprises a graph of nodes connected via weighted edges. A network management component (NMC) extracts features from tensor-formatted input data based on tensor-formatted parameters. NMC evolves tensor-formatted input data based on a defined tensor-tensor layer evolution rule, the network generating output data based on evolution of the tensor-formatted input data. The network is activated by non-linear activation functions, wherein the weighted edges and non-linear activation functions operate, based on tensor-tensor functions, to evolve tensor-formatted input data. NMC trains the network based on tensor-formatted training data, comparing output training data output from the network to simulated output data, based on a defined loss function, to determine an update. NMC updates the network, including weight and bias parameters, based on the update, by application of tensor-tensor operations.
机译:提出了用于生成和管理(包括模拟和训练)深张量神经网络的技术。深张量神经网络包括通过加权边连接的节点图。网络管理组件(NMC)基于张量格式的参数从张量格式的输入数据中提取特征。 NMC根据定义的张量-张量层演化规则来演化张量格式的输入数据,网络基于张量格式的输入数据的演化来生成输出数据。该网络由非线性激活函数激活,其中加权边缘和非线性激活函数基于张量-张量函数进行操作,以演化张量格式的输入数据。 NMC根据张量格式的训练数据训练网络,根据定义的损失函数将网络输出的输出训练数据与模拟的输出数据进行比较,以确定更新。 NMC通过应用张量-张量操作来更新网络,包括基于权重和偏差的参数。

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