We assume a spatial blind source separation model in which the observed multivariate spatial data is a linear mixture of latent spatially uncorrelated Gaussian random fields containing a number of pure white noise components. We propose a test on the number of white noise components and obtain the asymptotic distribution of its statistic for a general domain. We also demonstrate how computations can be facilitated in the case of gridded observation locations. Based on this test, we obtain a consistent estimator of the true dimension. Simulation studies and an environmental application demonstrate that our test is at least comparable to and often outperforms bootstrap-based techniques, which are also introduced in this paper.
翻译:我们假设了一个空间盲源分离模型,在这个模型中,观测到的多变量空间数据是含有若干纯白色噪音组件的隐性空间不相干高斯随机字段的线性混合物。我们建议对白色噪音组件的数量进行测试,并获得一般域的统计零星分布。我们还演示了在网格观测地点的情况下如何便利计算。根据这一测试,我们获得了一个对真实维度的一致估计。模拟研究和环境应用表明,我们的测试至少可以与本文中也介绍过的基于靴子的测地技术相近,而且往往优于这些技术。