4.7 Article

Bio-instantiated recurrent neural networks: Integrating neurobiology-based network topology in artificial networks

期刊

NEURAL NETWORKS
卷 142, 期 -, 页码 608-618

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.neunet.2021.07.011

关键词

Network topology; Connectomes; Artificial networks

资金

  1. Deutsche Forschungsgemeinschaft, Germany [SPP 2041/GO 2888/2-2, SFB 936/A1, TRR 169/A2, SFB 1461/A4, SPP 2041/HI 1286/7-1, HI 1286/6-1]
  2. Deutscher Akademischer Austausch Dienst (DAAD), Germany
  3. Human Brain Project, EU [SGA2, SGA3]

向作者/读者索取更多资源

Biological neuronal networks serve as inspiration for artificial neuronal networks, but they are sculpted by evolution while ANNs are engineered for specific tasks. The network topology of these systems shows pronounced differences, with strategies explored to construct bio-instantiated RNNs for different species' brains. Performance of these RNNs in working memory tasks is examined, highlighting the importance of empirical data for constructing neural networks.
Biological neuronal networks (BNNs) are a source of inspiration and analogy making for researchers that focus on artificial neuronal networks (ANNs). Moreover, neuroscientists increasingly use ANNs as a model for the brain. Despite certain similarities between these two types of networks, important differences can be discerned. First, biological neural networks are sculpted by evolution and the constraints that it entails, whereas artificial neural networks are engineered to solve particular tasks. Second, the network topology of these systems, apart from some analogies that can be drawn, exhibits pronounced differences. Here, we examine strategies to construct recurrent neural networks (RNNs) that instantiate the network topology of brains of different species. We refer to such RNNs as bio-instantiated. We investigate the performance of bio-instantiated RNNs in terms of: (i) the prediction performance itself, that is, the capacity of the network to minimize the cost function at hand in test data, and (ii) speed of training, that is, how fast during training the network reaches its optimal performance. We examine bio-instantiated RNNs in working memory tasks where task-relevant information must be tracked as a sequence of events unfolds in time. We highlight the strategies that can be used to construct RNNs with the network topology found in BNNs, without sacrificing performance. Despite that we observe no enhancement of performance when compared to randomly wired RNNs, our approach demonstrates how empirical neural network data can be used for constructing RNNs, thus, facilitating further experimentation with biologically realistic network topologies, in contexts where such aspect is desired. (C) 2021 The Author(s). Published by Elsevier Ltd.

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