Hierarchical Residuals Exploit Brain-Inspired Compositionality
Abstract
Hierarchical Residual Networks (HiResNets) enhance accuracy and learning speed in convolutional neural networks by incorporating long-range residual connections inspired by brain architecture.
We present Hierarchical Residual Networks (HiResNets), deep convolutional neural networks with long-range residual connections between layers at different hierarchical levels. HiResNets draw inspiration on the organization of the mammalian brain by replicating the direct connections from subcortical areas to the entire cortical hierarchy. We show that the inclusion of hierarchical residuals in several architectures, including ResNets, results in a boost in accuracy and faster learning. A detailed analysis of our models reveals that they perform hierarchical compositionality by learning feature maps relative to the compressed representations provided by the skip connections.
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