从非超自然观测数据估计因果效应。

IF 1.2 4区 数学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Seyed Mahdi Mahmoudi, Ernst C Wit
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引用次数: 4

摘要

科学的基本目标之一是解开特定系统的因果链。特别是对于大型系统,这可能是一项艰巨的任务。详细的干预和随机数据抽样方法可用于解决因果关系问题,但对于许多系统,这种干预是不可能的或太昂贵而无法获得。最近,Maathuis等人。(2010),遵循Spirtes等人的想法。(2000),引入了一个框架来估计大规模高斯系统中的因果效应。通过将因果网络描述为有向无环图,可以估计一类马尔可夫等效系统,这些系统可以一致地描述潜在的因果相互作用,即使是非高斯系统。在这些系统中,因果关系不再是线性的,不能再用单个系数来描述。在本文中,我们推导了非高斯分布的一个大子类,称为非超自然的因果效应的一般泛函形式。我们还推导了一个方便的近似,可以有效地用于估计。我们表明,估计在某些条件下是一致的,我们将该方法应用于拟南芥生物钟系统的观察性基因表达数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating Causal Effects from Nonparanormal Observational Data.

One of the basic aims of science is to unravel the chain of cause and effect of particular systems. Especially for large systems, this can be a daunting task. Detailed interventional and randomized data sampling approaches can be used to resolve the causality question, but for many systems, such interventions are impossible or too costly to obtain. Recently, Maathuis et al. (2010), following ideas from Spirtes et al. (2000), introduced a framework to estimate causal effects in large scale Gaussian systems. By describing the causal network as a directed acyclic graph it is a possible to estimate a class of Markov equivalent systems that describe the underlying causal interactions consistently, even for non-Gaussian systems. In these systems, causal effects stop being linear and cannot be described any more by a single coefficient. In this paper, we derive the general functional form of a causal effect in a large subclass of non-Gaussian distributions, called the non-paranormal. We also derive a convenient approximation, which can be used effectively in estimation. We show that the estimate is consistent under certain conditions and we apply the method to an observational gene expression dataset of the Arabidopsis thaliana circadian clock system.

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来源期刊
International Journal of Biostatistics
International Journal of Biostatistics MATHEMATICAL & COMPUTATIONAL BIOLOGY-STATISTICS & PROBABILITY
CiteScore
2.10
自引率
8.30%
发文量
28
审稿时长
>12 weeks
期刊介绍: The International Journal of Biostatistics (IJB) seeks to publish new biostatistical models and methods, new statistical theory, as well as original applications of statistical methods, for important practical problems arising from the biological, medical, public health, and agricultural sciences with an emphasis on semiparametric methods. Given many alternatives to publish exist within biostatistics, IJB offers a place to publish for research in biostatistics focusing on modern methods, often based on machine-learning and other data-adaptive methodologies, as well as providing a unique reading experience that compels the author to be explicit about the statistical inference problem addressed by the paper. IJB is intended that the journal cover the entire range of biostatistics, from theoretical advances to relevant and sensible translations of a practical problem into a statistical framework. Electronic publication also allows for data and software code to be appended, and opens the door for reproducible research allowing readers to easily replicate analyses described in a paper. Both original research and review articles will be warmly received, as will articles applying sound statistical methods to practical problems.
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