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Inference of regulatory networks with a convergence improved MCMC sampler

机译:通过融合改进的MCMC采样器推断监管网络

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摘要

BackgroundOne of the goals of the Systems Biology community is to have a detailed map of all biological interactions in an organism. One small yet important step in this direction is the creation of biological networks from post-genomic data. Bayesian networks are a very promising model for the inference of regulatory networks in Systems Biology. Usually, Bayesian networks are sampled with a Markov Chain Monte Carlo (MCMC) sampler in the structure space. Unfortunately, conventional MCMC sampling schemes are often slow in mixing and convergence. To improve MCMC convergence, an alternative method is proposed and tested with different sets of data. Moreover, the proposed method is compared with the traditional MCMC sampling scheme.
机译:背景技术系统生物学社区的目标之一是详细了解生物体内的所有生物相互作用。朝这个方向迈出的一个小而重要的步骤就是从后基因组数据创建生物网络。贝叶斯网络是系统生物学中调控网络推理的非常有前途的模型。通常,贝叶斯网络是使用马尔可夫链蒙特卡罗(MCMC)采样器在结构空间中采样的。不幸的是,常规的MCMC采样方案通常在混合和收敛方面很慢。为了提高MCMC的收敛性,提出了一种替代方法,并用不同的数据集进行了测试。此外,将该方法与传统的MCMC采样方案进行了比较。

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