We offer a general theoretical framework for brain and behavior that is evolutionarily and computationally plausible. The brain in our abstract model is a network of nodes and edges. Although it has some similarities to standard neural network models, as we show, there are some significant differences. Both nodes and edges in our network have weights and activation levels. They act as probabilistic transducers that use a set of relatively simple rules to determine how activation levels and weights are affected by input, generate output, and affect each other. We show that these simple rules enable a learning process that allows the network to represent increasingly complex knowledge, and simultaneously to act as a computing device that facilitates planning, decision-making, and the execution of behavior. By specifying the innate (genetic) components of the network, we show how evolution could endow the network with initial adaptive rules and goals that are then enriched through learning. We demonstrate how the developing structure of the network (which determines what the brain can do and how well) is critically affected by the co-evolved coordination between the mechanisms affecting the distribution of data input and those determining the learning parameters (used in the programs run by nodes and edges). Finally, we consider how the model accounts for various findings in the field of learning and decision making, how it can address some challenging problems in mind and behavior, such as those related to setting goals and self-control, and how it can help understand some cognitive disorders.
翻译:我们为大脑和行为提供了一个一般的理论框架,这种框架是进化和计算上可信的。我们的抽象模型中的大脑是一个由节点和边缘组成的网络。虽然它与标准的神经网络模型有一些相似之处,但正如我们所显示的那样,它与标准的神经网络模型有一些相似之处,但存在一些显著的差异。我们的网络中的节点和边缘都有权重和激活水平。它们作为概率性转介器,使用一套相对简单的规则来确定激活水平和重量如何受到输入的影响,产生产出,并相互影响。我们表明这些简单规则使得学习过程能够使网络能够代表日益复杂的知识网络,并同时作为计算机设备,促进规划、决策和行为执行。我们通过说明网络的内在(遗传)组成部分,我们网络的进化和边缘部分和边缘部分,我们通过学习来赋予网络以初始适应规则和目标,然后通过学习来丰富这些规则和目标。我们展示了网络的发展结构(决定大脑能做些什么,以及如何很好地)如何受到共同演变的协调的严重影响。我们证明影响数据输入分配和决定某些学习参数的机制之间的协调,以及那些决定其学习参数(在最后的操作中,我们如何理解了这些过程和决定了这些过程的边缘和过程是如何去理解这些决定的。