Jeon Ikhwan, Kim Taegon
Brain Science Institute, Korea Institute of Science and Technology, Seoul, Republic of Korea.
Front Comput Neurosci. 2023 Jun 28;17:1092185. doi: 10.3389/fncom.2023.1092185. eCollection 2023.
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.
尽管这可能看起来不可行且不切实际,但基于对神经科学的理解采用自下而上的方法构建人工智能却很简单直接。生物神经网络(BNN)缺乏通用的支配原则,这迫使我们通过将关于神经元、突触和神经回路的各种特征的零散信息转化为人工智能来解决这个问题。在这篇综述中,我们描述了最近通过遵循与神经网络优化在神经科学上相似的策略,或者通过植入优化结果(如单个计算单元的属性和网络架构的特征)来构建具有生物学合理性的神经网络的尝试。此外,我们提出了一种形式主义,用于描述神经网络试图实现的目标集与根据其架构特征与生物神经网络的相似程度分类的神经网络类别之间的关系。这种形式主义有望定义自上而下和自下而上方法在构建具有生物学合理性的神经网络中的潜在作用,并提供一张有助于指引神经科学与人工智能工程之间差距的地图。