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Regularization of non-homogeneous dynamic Bayesian networks with global information-coupling based on hierarchical Bayesian models

机译:基于分层贝叶斯模型的具有全局信息耦合的非均匀动态贝叶斯网络正则化

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摘要

To relax the homogeneity assumption of classical dynamic Bayesian networks (DBNs), various recent studies have combined DBNs with multiple changepoint processes. The underlying assumption is that the parameters associated with time series segments delimited by multiple changepoints are a priori independent. Under weak regularity conditions, the parameters can be integrated out in the likelihood, leading to a closed-form expression of the marginal likelihood. However, the assumption of prior independence is unrealistic in many real-world applications, where the segment-specific regulatory relationships among the interdependent quantities tend to undergo gradual evolutionary adaptations. We therefore propose a Bayesian coupling scheme to introduce systematic information sharing among the segment-specific interaction parameters. We investigate the effect this model improvement has on the network reconstruction accuracy in a reverse engineering context, where the objective is to learn the structure of a gene regulatory network from temporal gene expression profiles. The objective of the present paper is to expand and improve an earlier conference paper in six important aspects. Firstly, we offer a more comprehensive and self-contained exposition of the methodology. Secondly, we extend the model by introducing an extra layer to the model hierarchy, which allows for information-sharing among the network nodes, and we compare various coupling schemes for the noise variance hyperparameters. Thirdly, we introduce a novel collapsed Gibbs sampling step, which replaces a less efficient uncollapsed Gibbs sampling step of the original MCMC algorithm. Fourthly, we show how collapsing and blocking techniques can be used for developing a novel advanced MCMC algorithm with significantly improved convergence and mixing. Fifthly, we systematically investigate the influence of the (hyper-)hyperparameters of the proposed model. Sixthly, we empirically compare the proposed global information coupling scheme with an alternative paradigm based on sequential information sharing.
机译:为了放松经典动态贝叶斯网络(DBN)的同质性假设,最近的各种研究已将DBN与多个变更点过程结合在一起。基本假设是,与由多个更改点定界的时间序列段关联的参数是先验无关的。在弱规律性条件下,可以将参数整合到似然度中,从而生成边际似然度的封闭形式。但是,在许多实际应用中,先验独立性的假设是不现实的,在这些应用中,相互依赖的量之间的特定于细分市场的调节​​关系往往会经历逐渐的进化适应。因此,我们提出了一种贝叶斯耦合方案,以引入特定于段的交互参数之间的系统信息共享。我们研究了这种模型改进对逆向工程环境中的网络重构准确性的影响,其中目标是从时态基因表达谱中学习基因调控网络的结构。本文的目的是在六个重要方面扩展和改进早期的会议论文。首先,我们对方法论进行了更全面和独立的阐述。其次,我们通过在模型层次结构中引入额外的一层来扩展模型,从而允许网络节点之间进行信息共享,并且我们比较了噪声方差超参数的各种耦合方案。第三,我们介绍了一种新颖的折叠Gibbs采样步骤,它取代了原始MCMC算法中效率较低的未折叠Gibbs采样步骤。第四,我们展示了如何使用折叠和阻塞技术来开发一种新颖的,先进的MCMC算法,并显着改善收敛和混合效果。第五,我们系统地研究了所提出模型的(超)超参数的影响。第六,我们在经验上将提议的全局信息耦合方案与基于顺序信息共享的替代范式进行比较。

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