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A complex network model of semantic memory impairments

机译:语义记忆障碍的复杂网络模型

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In the last decades, several models have been proposed to describe the functions and the structure of human memory. Many of these agree in representing semantic memory, i.e. the part of memory which contains the general knowledge about the world, as a network. On the other hand, the study of complex networks is a new and emerging field at the intersection of physics, mathematics and computer science which aims at characterizing the topological properties of large networks. The paper proposes a quantitative study of the large-scale properties of semantic memory, modelled as the knowledge base of an automatic concept classifier of images. This approach allows us to probe the topological properties of the network, showing that it exhibits the marks of complexity, and provide us with a suitable mathematical framework to study memory impairments. These alterations are firstly modelled as nodes removals and secondly as links modifications, producing markedly different results.
机译:在过去的几十年中,已经提出了几种模型来描述人类记忆的功能和结构。这些中的许多在表示语义记忆方面是一致的,即,作为网络的包含有关世界的常识的记忆部分。另一方面,复杂网络的研究是物理学,数学和计算机科学交叉领域的一个新兴领域,旨在表征大型网络的拓扑特性。本文提出了语义记忆的大规模属性的定量研究,该模型被建模为图像自动概念分类器的知识库。这种方法使我们能够探究网络的拓扑特性,表明它表现出复杂性,并为我们提供了研究记忆障碍的合适数学框架。这些更改首先被建模为节点删除,其次被建模为链接修改,从而产生明显不同的结果。

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