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Formal Methods for Hopfield-Like Networks

机译:Hopfield-like网络的形式化方法

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Building a meaningful model of biological regulatory network is usually done by specifying the components (e.g. the genes) and their interactions, by guessing the values of parameters, by comparing the predicted behaviors to the observed ones, and by modifying in a trial-error process both architecture and parameters in order to reach an optimal fitness. We propose here a different approach to construct and analyze biological models avoiding the trial-error part, where structure and dynamics are represented as formal constraints. We apply the method to Hopfield-like networks, a formalism often used in both neural and regulatory networks modeling. The aim is to characterize automatically the set of all models consistent with all the available knowledge (about structure and behavior). The available knowledge is formalized into formal constraints. The latter are compiled into Boolean formula in conjunctive normal form and then submitted to a Boolean satisfiability solver. This approach allows to formulate a wide range of queries, expressed in a high level language, and possibly integrating formalized intuitions. In order to explore its potential, we use it to find cycles for 3-nodes networks and to determine the flower morphogenesis regulatory network of Arabidopsis thaliana. Applications of this technique are numerous and concern the building of models from data as well as the design of biological networks possessing specified behaviors.
机译:通常通过指定组成部分(例如基因)及其相互作用,猜测参数值,将预测行为与观察到的行为进行比较以及在试验错误过程中进行修改来构建有意义的生物调控网络模型。架构和参数,以达到最佳适应性。我们在这里提出了一种不同的方法来构建和分析生物学模型,从而避免了试验误差部分,因为结构和动力学表示为形式约束。我们将该方法应用于类似Hopfield的网络,这是神经网络和监管网络建模中经常使用的形式主义。目的是自动表征与所有可用知识(关于结构和行为)一致的所有模型的集合。现有知识被形式化为形式约束。后者以合取范式形式编译为布尔公式,然后提交给布尔可满足性求解器。这种方法允许以高级语言来表达各种各样的查询,并且可能整合形式化的直觉。为了探索其潜力,我们用它来寻找3节点网络的周期并确定拟南芥的花形态发生调控网络。该技术的应用众多,涉及根据数据构建模型以及具有特定行为的生物网络的设计。

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