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首页> 外文期刊>Progress in Neurobiology: An International Review Journal >Highest level automatisms in the nervous system: a theory of functional principles underlying the highest forms of brain function.
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Highest level automatisms in the nervous system: a theory of functional principles underlying the highest forms of brain function.

机译:神经系统中最高水平的自动机:构成最高脑功能形式的功能原理理论。

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摘要

A concept that all hierarchical levels of the nervous system are built according to the same functional principles is proposed. Each level is responsible for a discrete type or set of automatisms, is a learning system, and contains two distinct functional subdivisions: (1) a controller, a subsystem providing a governing set of rules or commands-a control law-that directs the action of the recipient of these rules-the controlled object; and (2) a model, a subsystem that generates a model of object behavior, i.e. afferent information flow expected from the controlled object. A control system such as this receives two types of afferent signals-initiating and informational. The difference between these signals is that a control system minimizes initiating signals during the realization of an automatism, i.e. a control neural network utilizes informational signals to compute the proper output that minimizes the initiating input signal. A mismatch or error signal, a type of initiating signal, is responsible for learning. Both the control law and the model can be adjusted during learning. The learning process starts when the error signal increases and stops when it is minimized. A network hierarchy is structurally and functionally organized in such a way that a lower control system in the nervous system becomes the controlled object for a higher one. This hierarchy leads to a generalization of encoded functional parameters and, consequently, the working space for each higher level control system becomes more abstracted. This is the reason why each hierarchical level within the control nervous system uses detectors specific for feature of the controlled object and the environment that match the control needs in order to obtain information about the current state of the object in the environment. Movement of information toward higher hierarchical levels also is accompanied by an increase in the duration of initiating signals within each control system. The ability to store a long prehistory of preceding events is considered as the mechanism that necessitated the invention of more complex and more rapid forms of learning such as operant learning, and made possible more complex multistep computational algorithms that require memorization of the results of previous intermediate computations. The functions of the cerebellum, the limbic system and the cortico-basal ganglia-thalamocortical loops are analyzed to illustrate the utility and applicability of this theoretical concept. Basal ganglia-thalamocortical loops are described as modeling, predictive loops, and their dopaminergic innervation as an error distribution system.
机译:提出了根据相同的功能原理构建神经系统的所有层次结构的概念。每个级别负责一种离散的类型或一组自动性,是一个学习系统,并且包含两个不同的功能细分:(1)控制器,提供规则或命令的主导设置的子系统-控制律-指导操作这些规则的接收者是受控对象; (2)一个模型,一个子系统,它生成一个对象行为模型,即从受控对象获得的传入信息流。这样的控制系统接收两种类型的传入信号:启动信号和信息信号。这些信号之间的差异在于,控制系统在实现自动过程中将启动信号最小化,即控制神经网络利用信息信号来计算使启动输入信号最小化的适当输出。不匹配或错误信号(一种启动信号)负责学习。学习期间可以调整控制律和模型。当误差信号增加时,学习过程开始;而当误差信号最小化时,学习过程停止。网络层次结构在结构上和功能上都经过组织,以使神经系统中的下层控制系统成为上层系统的受控对象。这种层次结构导致了编码功能参数的泛化,因此,每个更高级别控制系统的工作空间变得更加抽象。这就是为什么控制神经系统中的每个层次级别都使用特定于检测对象特征的检测器和与控制需求相匹配的环境的原因,以便获取有关环境中对象当前状态的信息。信息向更高等级的移动也伴随着每个控制系统内启动信号持续时间的增加。存储较长的先前事件的历史记录的能力被认为是一种机制,它需要发明更复杂,更快速的学习形式(例如操作学习),并使可能需要记忆先前中间结果的更复杂的多步计算算法成为可能计算。分析了小脑,边缘系统和皮质-基底神经节-丘脑皮质环的功能,以说明该理论概念的实用性和适用性。基底神经节-丘脑皮质环被描述为建模,预测环,其多巴胺能神经支配为误差分布系统。

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