Distinctive properties of biological neural networks and recent advances in bottom-up approaches toward a better biologically plausible neural network

Front Comput Neurosci. 2023 Jun 28:17:1092185. doi: 10.3389/fncom.2023.1092185. eCollection 2023.

Abstract

Although it may appear infeasible and impractical, building artificial intelligence (AI) using a bottom-up approach based on the understanding of neuroscience is straightforward. The lack of a generalized governing principle for biological neural networks (BNNs) forces us to address this problem by converting piecemeal information on the diverse features of neurons, synapses, and neural circuits into AI. In this review, we described recent attempts to build a biologically plausible neural network by following neuroscientifically similar strategies of neural network optimization or by implanting the outcome of the optimization, such as the properties of single computational units and the characteristics of the network architecture. In addition, we proposed a formalism of the relationship between the set of objectives that neural networks attempt to achieve, and neural network classes categorized by how closely their architectural features resemble those of BNN. This formalism is expected to define the potential roles of top-down and bottom-up approaches for building a biologically plausible neural network and offer a map helping the navigation of the gap between neuroscience and AI engineering.

Keywords: Dale's principle; balanced network; biological neural network supremacy; biologically plausible neural network; bottom-up approach; dendritic computation; neural network architecture; optimization of neural network.

Publication types

  • Review

Grants and funding

This research was supported by the Original Technology Program through the National Research Foundation of Korea (NRF) funded by the Ministry of Science and ICT (no. 2021M3F3A2A01037811) and by the KIST Institutional Program (project no., 2E32211).