Abstract Avalanches and generalized memory associativity in a network model for conscious and unconscious mental functioning
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Avalanches and generalized memory associativity in a network model for conscious and unconscious mental functioning

机译:网络模型中的雪崩和广义记忆缔址,以获得有意识和无意识的心理功能

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AbstractWe explore statistical characteristics of avalanches associated with the dynamics of a complex-network model, where two modules corresponding to sensorial and symbolic memories interact, representing unconscious and conscious mental processes. The model illustrates Freud’s ideas regarding the neuroses and that consciousness is related with symbolic and linguistic memory activity in the brain. It incorporates the Stariolo–Tsallis generalization of the Boltzmann Machine in order to model memory retrieval and associativity. In the present work, we define and measure avalanche size distributions during memory retrieval, in order to gain insight regarding basic aspects of the functioning of these complex networks. The avalanche sizes defined for our model should be related to the time consumed and also to the size of the neuronal region which is activated, during memory retrieval. This allows the qualitative comparison of the behaviour of the distribution of cluster sizes, obtained during fMRI measurements of the propagation of signals in the brain, with the distribution of avalanche sizes obtained in our simulation experiments. This comparison corroborates the indication that the Nonextensive Statistical Mechanics formalism may indeed be more well suited to model the complex networks which constitute brain and mental structure.Highlights<
机译:<![cdata [ Abstract 我们探索与复杂网络模型的动态相关的雪崩的统计特征,其中两个模块对应于传感器和符号存储器的交互,代表无意识和意识的心理过程。该模型说明了弗洛伊德关于神经和术语的想法,并且意识与大脑中的象征性和语言记忆活动有关。它采用了Boltzmann机器的Stariolo-Tsallis泛化,以便模拟内存检索和关联性。在本作工作中,我们在内存检索期间定义和测量雪崩大小分布,以便获得关于这些复杂网络运作的基本方面的洞察力。为我们的模型定义的雪崩大小应与在存储器检索期间激活的神经元区域的尺寸相关,并且在内存检索期间的尺寸相关。这允许在脑中信号传播的FMRI测量期间获得的簇尺寸分布的行为进行定性比较,并在我们的模拟实验中获得的雪崩尺寸的分布。这种比较证实了非夸张统计力学形式主义可能更适合模拟构成脑和精神结构的复杂网络的指示。 突出显示 <

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