Feldman Vitaly, Valiant Leslie G
IBM Almaden Research Center, San Jose, CA 95120, USA.
Neural Comput. 2009 Oct;21(10):2715-54. doi: 10.1162/neco.2009.08-08-851.
Over a lifetime, cortex performs a vast number of different cognitive actions, mostly dependent on experience. Previously it has not been known how such capabilities can be reconciled, even in principle, with the known resource constraints on cortex, such as low connectivity and low average synaptic strength. Here we describe neural circuits and associated algorithms that respect the brain's most basic resource constraints and support the execution of high numbers of cognitive actions when presented with natural inputs. Our circuits simultaneously support a suite of four basic kinds of task, each requiring some circuit modification: hierarchical memory formation, pairwise association, supervised memorization, and inductive learning of threshold functions. The capacity of our circuits is established by experiments in which sequences of several thousand such actions are simulated by computer and the circuits created tested for subsequent efficacy. Our underlying theory is apparently the only biologically plausible systems-level theory of learning and memory in cortex for which such a demonstration has been performed, and we argue that no general theory of information processing in the brain can be considered viable without such a demonstration.
在一生中,大脑皮层会执行大量不同的认知行为,这些行为大多依赖于经验。此前,人们甚至在原则上都不知道,这样的能力如何能与大脑皮层已知的资源限制相协调,比如低连接性和低平均突触强度。在这里,我们描述了一些神经回路及相关算法,它们符合大脑最基本的资源限制,并在面对自然输入时支持执行大量认知行为。我们的回路同时支持一组四种基本类型的任务,每种任务都需要对回路进行一些修改:分层记忆形成、成对关联、监督记忆以及阈值函数的归纳学习。我们通过实验确定了回路的能力,在这些实验中,数千个此类行为的序列由计算机模拟,并且对创建的回路进行测试以检验其后续功效。我们的基础理论显然是皮层中学习和记忆方面唯一具有生物学合理性的系统级理论,且已进行了这样的论证,我们认为,如果没有这样的论证,大脑中任何信息处理的通用理论都不能被认为是可行的。