Carrillo José Antonio, Cordier Stéphane, Mancini Simona
ICREA (Institució Catalana de Recerca i Estudis Avançats), Bellaterra, Spain.
J Math Biol. 2011 Nov;63(5):801-30. doi: 10.1007/s00285-010-0391-3. Epub 2010 Dec 24.
In computational neuroscience, decision-making may be explained analyzing models based on the evolution of the average firing rates of two interacting neuron populations, e.g., in bistable visual perception problems. These models typically lead to a multi-stable scenario for the concerned dynamical systems. Nevertheless, noise is an important feature of the model taking into account both the finite-size effects and the decision's robustness. These stochastic dynamical systems can be analyzed by studying carefully their associated Fokker-Planck partial differential equation. In particular, in the Fokker-Planck setting, we analytically discuss the asymptotic behavior for large times towards a unique probability distribution, and we propose a numerical scheme capturing this convergence. These simulations are used to validate deterministic moment methods recently applied to the stochastic differential system. Further, proving the existence, positivity and uniqueness of the probability density solution for the stationary equation, as well as for the time evolving problem, we show that this stabilization does happen. Finally, we discuss the convergence of the solution for large times to the stationary state. Our approach leads to a more detailed analytical and numerical study of decision-making models applied in computational neuroscience.
在计算神经科学中,决策可以通过基于两个相互作用的神经元群体平均放电率的演化来分析模型进行解释,例如在双稳态视觉感知问题中。这些模型通常会导致相关动力系统出现多稳态情况。然而,考虑到有限尺寸效应和决策的稳健性,噪声是该模型的一个重要特征。这些随机动力系统可以通过仔细研究其相关的福克 - 普朗克偏微分方程来进行分析。特别是,在福克 - 普朗克框架下,我们分析性地讨论了长时间趋向唯一概率分布的渐近行为,并提出了一种捕捉这种收敛的数值方案。这些模拟用于验证最近应用于随机微分系统的确定性矩方法。此外,通过证明稳态方程以及时间演化问题的概率密度解的存在性、正性和唯一性,我们表明这种稳定确实会发生。最后,我们讨论了长时间解向稳态的收敛性。我们的方法对计算神经科学中应用的决策模型进行了更详细的分析和数值研究。