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LEARNING LOCAL DIRECTED ACYCLIC GRAPHS BASED ON MULTIVARIATE TIME SERIES DATA

机译:学习到本地向无环图基于多元时间序列数据

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摘要

Multivariate time series (MTS) data such as time course gene expression data in genomics are often collected to study the dynamic nature of the systems. These data provide important information about the causal dependency among a set of random variables. In this paper, we introduce a computationally efficient algorithm to learn directed acyclic graphs (DAGs) based on MTS data, focusing on learning the local structure of a given target variable. Our algorithm is based on learning all parents (P), all children (C) and some descendants (D) (PCD) iteratively, utilizing the time order of the variables to orient the edges. This time series PCD-PCD algorithm (tsPCD-PCD) extends the previous PCD-PCD algorithm to dependent observations and utilizes composite likelihood ratio tests (CLRTs) for testing the conditional independence. We present the asymptotic distribution of the CLRT statistic and show that the tsPCD-PCD is guaranteed to recover the true DAG structure when the faithfulness condition holds and the tests correctly reject the null hypotheses. Simulation studies show that the CLRTs are valid and perform well even when the sample sizes are small. In addition, the tsPCD-PCD algorithm outperforms the PCD-PCD algorithm in recovering the local graph structures. We illustrate the algorithm by analyzing a time course gene expression data related to mouse T-cell activation.
机译:通常收集诸如基因组学中的时程基因表达数据之类的多元时间序列(MTS)数据,以研究系统的动态特性。这些数据提供了有关一组随机变量之间因果关系的重要信息。在本文中,我们引入了一种计算有效的算法来学习基于MTS数据的有向无环图(DAG),重点是学习给定目标变量的局部结构。我们的算法基于迭代学习所有父母(P),所有孩子(C)和一些后代(D)(PCD),并利用变量的时间顺序来确定边的方向。此时间序列PCD-PCD算法(tsPCD-PCD)将先前的PCD-PCD算法扩展到相关观测,并利用复合似然比检验(CLRT)来测试条件独立性。我们提出了CLRT统计量的渐近分布,并表明当信度条件成立并且测试正确拒绝了原假设时,tsPCD-PCD可以保证恢复真实的DAG结构。仿真研究表明,即使样本量很小,CLRT仍然有效且表现良好。此外,在恢复局部图结构方面,tsPCD-PCD算法优于PCD-PCD算法。我们通过分析与小鼠T细胞激活相关的时程基因表达数据来说明该算法。

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  • 期刊名称 other
  • 作者

    Wanlu Deng; Zhi Geng; Hongzhe Li;

  • 作者单位
  • 年(卷),期 -1(7),3
  • 年度 -1
  • 页码 1249–1835
  • 总页数 21
  • 原文格式 PDF
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