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A solver for the stochastic master equation applied to gene regulatory networks

机译:应用于基因调控网络的随机主方程的求解器

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An important driver of gene regulatory networks is noise arising from the stochastic nature of interactions of genes, their products and regulators. Thus, such systems are stochastic and can be modelled by the chemical master equations. A major challenge is the curse of dimensionality which occurs when one attempts to integrate these equations. While stochastic simulation techniques effectively address the curse, many repeated simulations are required to provide precise information about stationary points, bifurcation phenomena and other properties of the stochastic processes. An alternative way to address the curse of dimensionality is provided by sparse grid approximations. The sparse grid methodology is applied and the application demonstrated to work efficiently for up to 10 proteins. As sparse grid methods have been developed for the approximation of smooth functions. a variant for infinite sequences had to be developed together with a multiresolution analysis similar to Haar wavelets. Error bounds are provided which confirm the effectiveness of sparse grid approximations for smooth high-dimensional probability distributions. (c) 2006 Elsevier B.V. All rights reserved.
机译:基因调节网络的重要驱动因素是基因,其产物和调节剂相互作用的随机性产生的噪声。因此,这样的系统是随机的,并且可以通过化学主方程来建模。一个主要的挑战是维数的诅咒,这是当人们试图整合这些方程式时发生的。尽管随机模拟技术有效地解决了这一难题,但仍需要进行多次重复模拟才能提供有关固定点,分叉现象和随机过程的其他属性的精确信息。稀疏网格近似提供了解决维数诅咒的另一种方法。应用了稀疏网格方法,并证明该应用程序可有效处理多达10种蛋白质。随着稀疏网格方法的发展,用于逼近平滑函数。必须开发无限序列的变体以及类似于Haar小波的多分辨率分析。提供了误差范围,这些误差范围确认了稀疏网格近似对于平滑高维概率分布的有效性。 (c)2006 Elsevier B.V.保留所有权利。

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