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Correlation test for high dimensional data with application to signal detection in sensor networks

机译:高维数据的相关测试及其在传感器网络信号检测中的应用

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The problem of correlation detection of multivariate Gaussian observations is considered. The problem is formulated as a binary hypothesis test, where the null hypothesis corresponds to a diagonal correlation matrix with possibly different diagonal entries, whereas the alternative would be associated to any other form of positive covariance. Using tools from random matrix theory, we study the asymptotic behavior of the Generalized Likelihood Ratio Test (GLRT) under both hypothesis, assuming that both the sample size and the observation dimension tend to infinity at the same rate. It is shown that the GLRT statistic always converges to a Gaussian distribution, although the asymptotic mean and variance will strongly depend the actual hypothesis. Numerical simulations demonstrate the superiority of the proposed asymptotic description in situations where the sample size is not much larger than the observation dimension.
机译:考虑了多元高斯观测值的相关性检测问题。该问题被表述为二进制假设检验,其中零假设对应于具有可能不同的对角项的对角相关矩阵,而替代项将与任何其他形式的正协方差相关。使用随机矩阵理论的工具,我们在两种假设下研究了广义似然比检验(GLRT)的渐近行为,假设样本量和观察维数趋于以相同的速率趋于无穷大。结果表明,尽管渐近均值和方差将强烈依赖于实际假设,但GLRT统计量始终收敛于高斯分布。数值模拟证明了在样本大小不大于观测维度的情况下所提出的渐近描述的优越性。

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