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A semi-tensor product approach for probabilistic boolean networks

机译:概率布尔网络的半张量积方法

摘要

Modeling genetic regulatory networks is an important issue in systems biology. Various models and mathematical formalisms have been proposed in the literature to solve the capture problem. The main purpose in this paper is to show that the transition matrix generated under semi-tensor product approach (Here we call it the probability structure matrix for simplicity) and the traditional approach (Transition probability matrix) are similar to each other. And we shall discuss three important problems in Probabilistic Boolean Networks (PBNs): the dynamic of a PBN, the steady-state probability distribution and the inverse problem. Numerical examples are given to show the validity of our theory. We shall give a brief introduction to semi-tensor and its application. After that we shall focus on the main results: to show the similarity of these two matrices. Since the semi-tensor approach gives a new way for interpreting a BN and therefore a PBN, we expect that advanced algorithms can be developed if one can describe the PBN through semi-tensor product approach.
机译:遗传调控网络建模是系统生物学中的重要问题。在文献中已经提出了各种模型和数学形式主义来解决捕获问题。本文的主要目的是证明在半张量积方法(为简单起见,这里称为概率结构矩阵)下生成的过渡矩阵与传统方法(过渡概率矩阵)相似。并且,我们将讨论概率布尔网络(PBN)中的三个重要问题:PBN的动态性,稳态概率分布和逆问题。数值例子说明了我们理论的正确性。我们将简要介绍半张量及其应用。之后,我们将集中在主要结果上:显示这两个矩阵的相似性。由于半张量方法提供了一种解释BN以及PBN的新方法,因此,如果人们可以通过半张量积方法来描述PBN,我们希望可以开发出高级算法。

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