Song Hoseung, Wu Michael C
Department of Industrial and Systems Engineering, KAIST, Daejeon, Republic of Korea.
Public Health Sciences Division, Fred Hutchinson Cancer Research Center, Seattle, WA, U.S.A.
Stat (Int Stat Inst). 2024 Jun;13(2). doi: 10.1002/sta4.704. Epub 2024 Jun 7.
Identifying how dependence relationships vary across different conditions plays a significant role in many scientific investigations. For example, it is important for the comparison of biological systems to see if relationships between genomic features differ between cases and controls. In this paper, we seek to evaluate whether relationships between two sets of variables are different or not across two conditions. Specifically, we assess: We propose a new kernel-based test to capture the differential dependence. Specifically, the new test determines whether two measures that detect dependence relationships are similar or not under two conditions. We introduce the asymptotic permutation null distribution of the test statistic and it is shown to work well under finite samples such that the test is computationally efficient, significantly enhancing its usability in analyzing large datasets. We demonstrate through numerical studies that our proposed test has high power for detecting differential linear and non-linear relationships. The proposed method is implemented in an R package kerDAA.
识别依赖关系如何在不同条件下变化在许多科学研究中起着重要作用。例如,对于生物系统的比较而言,查看基因组特征之间的关系在病例和对照之间是否不同很重要。在本文中,我们试图评估两组变量之间的关系在两种条件下是否不同。具体来说,我们评估:我们提出了一种新的基于核的检验来捕捉差异依赖性。具体而言,新检验确定在两种条件下检测依赖关系的两个度量是否相似。我们引入了检验统计量的渐近置换零分布,并且证明它在有限样本下效果良好,使得该检验在计算上效率很高,显著提高了其在分析大型数据集时的可用性。我们通过数值研究表明,我们提出的检验在检测差异线性和非线性关系方面具有很高的功效。所提出的方法在一个R包kerDAA中实现。