Inference using phi-divergence Goodness-of-Fit tests

Nikhil Kundargi, A. Tewfik
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引用次数: 1

Abstract

In this paper we study the inferential use of goodness of fit tests in a non-parametric setting. The utility of such tests will be demonstrated for the test case of spectrum sensing applications in cognitive radios. For the first time, we provide a comprehensive framework for decision fusion of a ensemble of goodness-of-fit testing procedures through an Ensemble Goodness-of-Fit test. Also, we introduce a generalized family of functionals and kernels called Φ-divergences which allow us to formulate goodness-of-fit tests that are parameterized by a single parameter s. The performance of these tests is simulated under gaussian and non-gaussian noise in a MIMO setting. We show that under uncertainty or non-gaussianity in the noise, the performance of non-parametric tests in general, and phi-divergence based goodness-of-fit tests in particular, is significantly superior to that of the energy detector with reduced implementation complexity. Especially important is the property that the false alarm rates of our proposed tests is maintained at a fixed level over a wide variation in the channel noise distributions.
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使用散度拟合优度检验进行推理
本文研究了非参数条件下拟合优度检验的推理应用。这些测试的效用将在认知无线电频谱传感应用的测试案例中得到证明。第一次,我们提供了一个综合框架的决策融合的拟合优度测试程序的集合通过一个整体的拟合优度测试。此外,我们还引入了一个广义的函数族和称为Φ-divergences的核函数,它允许我们制定由单个参数s参数化的拟合优度测试。在MIMO设置中,这些测试在高斯和非高斯噪声下的性能进行了模拟。我们表明,在噪声的不确定性或非高斯性下,一般的非参数测试,特别是基于phi散度的拟合优度测试的性能明显优于降低了实现复杂性的能量检测器。特别重要的是,我们提出的测试的误报率在通道噪声分布的广泛变化中保持在固定水平。
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