首页> 外国专利> COMPRESSION OF FULLY CONNECTED/RECURRENT LAYERS OF DEEP NETWORK(S) THROUGH ENFORCING SPATIAL LOCALITY TO WEIGHT MATRICES AND EFFECTING FREQUENCY COMPRESSION

COMPRESSION OF FULLY CONNECTED/RECURRENT LAYERS OF DEEP NETWORK(S) THROUGH ENFORCING SPATIAL LOCALITY TO WEIGHT MATRICES AND EFFECTING FREQUENCY COMPRESSION

机译:通过确保权重矩阵的空间局部性和影响频率压缩来深层网络的完全连接/递归层的压缩

摘要

A system, having a memory that stores computer executable components, and a processor that executes the computer executable components, reduces data size in connection with training a neural network by exploiting spatial locality to weight matrices and effecting frequency transformation and compression. A receiving component receives neural network data in the form of a compressed frequency-domain weight matrix. A segmentation component segments the initial weight matrix into original sub-components, wherein respective original sub-components have spatial weights. A sampling component applies a generalized weight distribution to the respective original sub-components to generate respective normalized sub-components. A transform component applies a transform to the respective normalized sub-components. A cropping component crops high-frequency weights of the respective transformed normalized sub-components to yield a set of low-frequency normalized sub-components to generate a compressed representation of the original sub-components.
机译:一种系统,其具有存储计算机可执行组件的存储器和执行计算机可执行组件的处理器,通过利用权重矩阵的空间局部性并实现频率变换和压缩来减少与训练神经网络有关的数据大小。接收组件接收压缩的频域权重​​矩阵形式的神经网络数据。分割分量将初始权重矩阵分割为原始子分量,其中各个原始子分量具有空间权重。采样组件将广义权重分布应用于各个原始子组件,以生成各个归一化子组件。变换组件将变换应用于各个归一化子组件。裁剪组件裁剪各个变换后的归一化子组件的高频权重,以生成一组低频归一化子组件,以生成原始子组件的压缩表示。

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