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External control in Markovian genetic regulatory networks: the imperfect information case

机译:马尔可夫遗传调控网络中的外部控制:不完善的信息案例

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摘要

Probabilistic Boolean Networks, which form a subclass of Markovian Genetic Regulatory Networks, have been recently introduced as a rule-based paradigm for modeling gene regulatory networks. In an earlier paper, we introduced external control into Markovian Genetic Regulatory networks. More precisely, given a Markovian genetic regulatory network whose state transition probabilities depend on an external (control) variable, a Dynamic Programming-based procedure was developed by which one could choose the sequence of control actions that minimized a given performance index over a finite number of steps. The control algorithm of that paper, however, could be implemented only when one had perfect knowledge of the states of the Markov Chain. This paper presents a control strategy that can be implemented in the imperfect information case, and makes use of the available measurements which are assumed to be probabilistically related to the states of the underlying Markov Chain.
机译:概率布尔网络是马尔可夫遗传调节网络的一个子类,最近作为基于规则的范例被引入到基因调节网络的建模中。在较早的论文中,我们将外部控制引入了马尔可夫遗传调控网络。更精确地说,给定状态转移概率取决于外部(控制)变量的马尔可夫遗传调节网络,开发了一种基于动态编程的程序,通过该程序,可以选择一系列控制动作,以最小化给定性能指标的数量步骤。然而,只有当人们完全了解马尔可夫链的状态时,才能实施该论文的控制算法。本文提出了一种可以在信息不完全的情况下实施的控制策略,并利用了被认为与基础马尔可夫链的状态概率相关的可用度量。

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