Pomi Andrés, Mizraji Eduardo
Sección Biofísica, Facultad de Ciencias, Universidad de la República, Iguá 4225, Montevideo 11400, Uruguay.
Phys Rev E Stat Nonlin Soft Matter Phys. 2004 Dec;70(6 Pt 2):066136. doi: 10.1103/PhysRevE.70.066136. Epub 2004 Dec 23.
Graphs have been increasingly utilized in the characterization of complex networks from diverse origins, including different kinds of semantic networks. Human memories are associative and are known to support complex semantic nets; these nets are represented by graphs. However, it is not known how the brain can sustain these semantic graphs. The vision of cognitive brain activities, shown by modern functional imaging techniques, assigns renewed value to classical distributed associative memory models. Here we show that these neural network models, also known as correlation matrix memories, naturally support a graph representation of the stored semantic structure. We demonstrate that the adjacency matrix of this graph of associations is just the memory coded with the standard basis of the concept vector space, and that the spectrum of the graph is a code invariant of the memory. As long as the assumptions of the model remain valid this result provides a practical method to predict and modify the evolution of the cognitive dynamics. Also, it could provide us with a way to comprehend how individual brains that map the external reality, almost surely with different particular vector representations, are nevertheless able to communicate and share a common knowledge of the world. We finish presenting adaptive association graphs, an extension of the model that makes use of the tensor product, which provides a solution to the known problem of branching in semantic nets.
图表越来越多地被用于表征来自不同来源的复杂网络,包括不同类型的语义网络。人类记忆具有关联性,并且已知能够支持复杂的语义网络;这些网络由图表表示。然而,目前尚不清楚大脑如何维持这些语义图表。现代功能成像技术所展示的认知大脑活动的视角,为经典的分布式联想记忆模型赋予了新的价值。在此我们表明,这些神经网络模型,也被称为相关矩阵记忆,自然地支持所存储语义结构的图表表示。我们证明,这种关联图表的邻接矩阵正是用概念向量空间的标准基编码的记忆,并且图表的频谱是记忆的一个编码不变量。只要模型的假设仍然有效,这一结果就提供了一种预测和修改认知动力学演化的实用方法。此外,它还能为我们提供一种方式,来理解那些几乎肯定以不同特定向量表示来映射外部现实的个体大脑,是如何能够进行交流并共享关于世界的共同知识的。我们最后展示了自适应关联图表,这是该模型利用张量积的一种扩展,它为语义网络中已知的分支问题提供了一个解决方案。