布尔调节网络控制节点检测。

Steffen Schober, David Kracht, Reinhard Heckel, Martin Bossert
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引用次数: 4

摘要

假设调节网络的布尔模型对扰动具有容忍度。这在定性上意味着每个函数只能依赖于几个节点。生物动机约束进一步表明,在布尔调节网络中发现的功能属于某些类型的功能,例如,单函数。这些类在傅里叶域中有特定的性质。这促使我们研究利用谱技术在布尔网络中检测控制节点的问题。我们考虑具有不平衡函数和平均灵敏度小于23k的函数的网络,其中k是函数的控制变量数。此外,我们考虑了一类1-low网络,其中包括unate网络,线性阈值网络和嵌套分析函数网络。我们表明,与基于穷举搜索的算法相比,谱学习算法的应用在控制节点检测方面具有更好的时间和样本复杂度。对于一个特定的算法,我们声明了找到布尔函数的控制节点所需的样本数量的解析上界。在此基础上,提出了一种用于大规模单一网络控制节点检测的改进算法,并进行了数值研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Detecting controlling nodes of boolean regulatory networks.

Boolean models of regulatory networks are assumed to be tolerant to perturbations. That qualitatively implies that each function can only depend on a few nodes. Biologically motivated constraints further show that functions found in Boolean regulatory networks belong to certain classes of functions, for example, the unate functions. It turns out that these classes have specific properties in the Fourier domain. That motivates us to study the problem of detecting controlling nodes in classes of Boolean networks using spectral techniques. We consider networks with unbalanced functions and functions of an average sensitivity less than 23k, where k is the number of controlling variables for a function. Further, we consider the class of 1-low networks which include unate networks, linear threshold networks, and networks with nested canalyzing functions. We show that the application of spectral learning algorithms leads to both better time and sample complexity for the detection of controlling nodes compared with algorithms based on exhaustive search. For a particular algorithm, we state analytical upper bounds on the number of samples needed to find the controlling nodes of the Boolean functions. Further, improved algorithms for detecting controlling nodes in large-scale unate networks are given and numerically studied.

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