论文标题
神经生物学中的时空模式:未来人工智能的概述
Spatiotemporal Patterns in Neurobiology: An Overview for Future Artificial Intelligence
论文作者
论文摘要
近年来,人们对开发模型和工具的兴趣越来越多,以解决脑组织中发现的复杂连通性模式。具体而言,这是由于需要了解在多个时空尺度下这些网络结构从这些网络结构中出现的如何出现。我们认为,计算模型是阐明从多尺度时间和空间域上通过复杂网络连接的异质神经元相互作用而出现的可能功能的关键工具。在这里,我们回顾了几类模型,包括尖峰神经元,具有短期可塑性(STP)的集成和消防神经元,带有STP的基于电导的集成和开火模型以及种群密度神经场(PDNF)模型,使用具有神经科学应用的简单示例,同时还为AI提供了一些潜在的未来研究指导。这些计算方法使我们能够探索在实验和理论上改变基本机制对产生的网络功能的影响。因此,我们希望这些研究能为人工智能算法的未来发展提供信息,并帮助我们根据动物或人类实验来验证我们对脑过程的理解。
In recent years, there has been increasing interest in developing models and tools to address the complex patterns of connectivity found in brain tissue. Specifically, this is due to a need to understand how emergent properties emerge from these network structures at multiple spatiotemporal scales. We argue that computational models are key tools for elucidating the possible functionalities that can emerge from interactions of heterogeneous neurons connected by complex networks on multi-scale temporal and spatial domains. Here we review several classes of models including spiking neurons, integrate and fire neurons with short term plasticity (STP), conductance based integrate-and-fire models with STP, and population density neural field (PDNF) models using simple examples with emphasis on neuroscience applications while also providing some potential future research directions for AI. These computational approaches allow us to explore the impact of changing underlying mechanisms on resulting network function both experimentally as well as theoretically. Thus we hope these studies will inform future developments in artificial intelligence algorithms as well as help validate our understanding of brain processes based on experiments in animals or humans.