Janelia Farm Research Campus, Howard Hughes Medical Institute Ashburn, VA, USA.
Front Comput Neurosci. 2012 Sep 28;6:73. doi: 10.3389/fncom.2012.00073. eCollection 2012.
An outstanding question in theoretical neuroscience is how the brain solves the neural binding problem. In vision, binding can be summarized as the ability to represent that certain properties belong to one object while other properties belong to a different object. I review the binding problem in visual and other domains, and review its simplest proposed solution - the anatomical binding hypothesis. This hypothesis has traditionally been rejected as a true solution because it seems to require a type of one-to-one wiring of neurons that would be impossible in a biological system (as opposed to an engineered system like a computer). I show that this requirement for one-to-one wiring can be loosened by carefully considering how the neural representation is actually put to use by the rest of the brain. This leads to a solution where a symbol is represented not as a particular pattern of neural activation but instead as a piece of a global stable attractor state. I introduce the Dynamically Partitionable AutoAssociative Network (DPAAN) as an implementation of this solution and show how DPANNs can be used in systems which perform perceptual binding and in systems that implement syntax-sensitive rules. Finally I show how the core parts of the cognitive architecture ACT-R can be neurally implemented using a DPAAN as ACT-R's global workspace. Because the DPAAN solution to the binding problem requires only "flat" neural representations (as opposed to the phase encoded representation hypothesized in neural synchrony solutions) it is directly compatible with the most well developed neural models of learning, memory, and pattern recognition.
理论神经科学中的一个突出问题是大脑如何解决神经捆绑问题。在视觉中,捆绑可以概括为能够表示某些属性属于一个物体,而其他属性属于不同的物体的能力。我回顾了视觉和其他领域的捆绑问题,并回顾了其最简单的提议解决方案 - 解剖捆绑假说。由于它似乎需要神经元的一对一布线,而这种布线在生物系统中是不可能的(与计算机等工程系统相反),因此该假说传统上被拒绝为真正的解决方案。我表明,通过仔细考虑大脑其余部分实际如何利用神经表示,可以放宽对一对一布线的要求。这导致了一种解决方案,其中符号不是表示为特定的神经激活模式,而是表示为全局稳定吸引子状态的一部分。我引入了动态可分区自联想网络(DPAAN)作为该解决方案的实现,并展示了 DPANN 如何用于执行感知捆绑的系统以及实现语法敏感规则的系统。最后,我展示了如何使用 DPAAN 作为 ACT-R 的全局工作区,将认知架构 ACT-R 的核心部分神经实现。由于绑定问题的 DPAAN 解决方案仅需要“扁平”的神经表示(与神经同步解决方案中假设的相位编码表示相反),因此它与学习、记忆和模式识别的最发达的神经模型直接兼容。