图形模型中统计阈值的选择。

Anthony Almudevar
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引用次数: 4

摘要

基于实验数据的基因调控网络重建通常依赖于统计证据,因此需要选择一个定义显著生物效应的统计阈值。在文献中发现的解决这个问题的方法范围从严格的多重测试程序到特别的p值截止点。然而,当数据包含图形结构时,应该可以在阈值选择过程中利用这一特征。在本文中,我们提出了一个基于这一原则的程序。利用编码理论,我们设计了图形结构的度量,例如,高度连接的节点或链结构。可以将特定图的度量与随机图的度量进行比较,并在此基础上推断出结构。通过改变统计阈值,可以估计出与随机结构的最大偏差,然后在此基础上选择阈值。图结构的全局测试自然随之而来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Selection of statistical thresholds in graphical models.

Reconstruction of gene regulatory networks based on experimental data usually relies on statistical evidence, necessitating the choice of a statistical threshold which defines a significant biological effect. Approaches to this problem found in the literature range from rigorous multiple testing procedures to ad hoc P-value cut-off points. However, when the data implies graphical structure, it should be possible to exploit this feature in the threshold selection process. In this article we propose a procedure based on this principle. Using coding theory we devise a measure of graphical structure, for example, highly connected nodes or chain structure. The measure for a particular graph can be compared to that of a random graph and structure inferred on that basis. By varying the statistical threshold the maximum deviation from random structure can be estimated, and the threshold is then chosen on that basis. A global test for graph structure follows naturally.

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