论文标题
稀疏性和依赖性下的信号包容性弱
Weak Signal Inclusion Under Sparsity and Dependence
论文作者
论文摘要
我们认为,重要信号不足以与大量噪声分离的情况。这种弱信号通常存在于大规模数据分析中,并且在许多生物医学应用中起着至关重要的作用。但是,对于此类较弱的信号,现有方法的功能主要不足。我们从虚假负面控制的角度解决了挑战,并开发了一种新方法,以在用户指定的级别上有效调节假阴性比例。新方法是在变量之间具有任意协方差依赖性的现实环境中开发的。我们通过一个参数校准总体依赖性,该参数与高维稀疏推理中现有的相图兼容。利用新的校准,我们渐近地解释了协方差依赖性,信号稀疏性和信号强度对所提出方法的关节效应。我们使用新的相图解释结果,该图表明,即使无法与噪声分离,提出的方法也可以有效保留高比例的信号。将提出方法的有限样本性能与模拟研究中现有方法的几种现有方法进行了比较。所提出的方法在适应用户指定的假阴性控制级别方面优于其他方法。我们应用新方法来分析fMRI数据集,以找到与萨卡迪克眼动功能相关的体素。新方法在识别功能相关区域并避免过度的噪声体素方面表现出了很好的平衡。
We consider the scenario where important signals are not strong enough to be separable from a large amount of noise. Such weak signals commonly exist in large-scale data analysis and play vital roles in many biomedical applications. Existing methods however are mostly underpowered for such weak signals. We address the challenge from the perspective of false negative control and develop a new method to efficiently regulate false negative proportion at a user-specified level. The new method is developed in a realistic setting with arbitrary covariance dependence between variables. We calibrate the overall dependence through a parameter whose scale is compatible with the existing phase diagram in high-dimensional sparse inference. Utilizing the new calibration, we asymptotically explicate the joint effect of covariance dependence, signal sparsity, and signal intensity on the proposed method. We interpret the results using a new phase diagram, which shows that the proposed method can efficiently retain a high proportion of signals even when they cannot be well-separated from noise. Finite sample performance of the proposed method is compared to those of several existing methods in simulation studies. The proposed method outperforms the others in adapting to a user-specified false negative control level. We apply the new method to analyze an fMRI dataset to locate voxels that are functionally relevant to saccadic eye movements. The new method exhibits a nice balance in identifying functional relevant regions and avoiding excessive noise voxels.