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q-Maximum Entropy Distributions and Memory Neural Networks

机译:q-最大熵分布和记忆神经网络

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q-Maximum Entropy (q-MaxEnt) distributions optimizing the S_q, power-law entropic functionals are at the core of the nonextensive thermostatistical formalism. This formalism has been increasingly applied to the description of diverse complex systems in physics, biology, economics, and other fields. Previous work on computational neural models for mental phenomena, such as neurosis, creativity, and the interplay between consciousness and unconsciousness, suggests that q-MaxEnt distributions may be relevant for the study of neural models for these processes. Evidence for q-MaxEnt distributions arises in connection with models of associative memory, which constitute a key ingredient in the theoretical analysis of the alluded mental phenomena. In the present contribution, we compare two possible dynamical mechanisms leading to q-MaxEnt distributions in memory neural networks, when these are modeled by linear or non-linear deformed Fokker-Planck equations. Our joint analysis of these two formalisms (that have been treated separately in the literature) allow us to identify some general features of these approaches that clarify and differentiate their underlying physical basis.
机译:优化S_q,幂律熵函数的q-最大熵(q-MaxEnt)分布是非扩展热统计形式主义的核心。这种形式主义已越来越多地用于描述物理学,生物学,经济学和其他领域的各种复杂系统。关于心理现象(例如神经症,创造力以及意识和无意识之间的相互作用)的计算神经模型的先前工作表明,q-MaxEnt分布可能与研究这些过程的神经模型有关。 q-MaxEnt分布的证据与联想记忆模型有关,联想记忆模型构成了对所暗示的心理现象进行理论分析的关键因素。在当前的贡献中,当通过线性或非线性变形Fokker-Planck方程建模时,我们比较了导致记忆神经网络中q-MaxEnt分布的两种可能的动力学机制。我们对这两种形式主义的联合分析(在文献中已分别进行了处理)使我们能够确定这些方法的一些一般特征,以阐明和区分其基本的物理基础。

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