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Non-Negative Connectivity Causes Bow-Tie Architecture in Neural Circuits

Liu, Z.; Du, C.; Wong-Lin, K.; Wang, D.-H.

2024-07-23 neuroscience
10.1101/2024.07.19.604347 bioRxiv
Show abstract

Bow-tie or hourglass architecture is commonly found in biological neural networks. Recently, artificial neural networks with bow-tie architecture have been widely used in various machine-learning applications. However, it is unclear how bow-tie architecture in neural circuits can be formed. We address this by training multi-layer neural network models to perform classification tasks. We demonstrate that during network learning and structural changes, non-negative connections amplify error signals and quench neural activity particularly in the hidden layer, resulting in the emergence of the networks bow-tie architecture. We further show that such architecture has low wiring cost, robust to network size, and generalizable to different discrimination tasks. Overall, our work suggests a possible mechanism for the emergence of bow-tie neural architecture and its functional advantages.

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