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Robust composite binary hypothesis testing via measure-transformed quasi score test

机译:通过度量转换的准得分检验进行稳健的复合二元假设检验

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This paper deals with the problem of composite binary hypothesis testing when an accurate parametric probability model is not available. Under this framework, a robust generalization of the Gaussian quasi score test (GQST) is developed. The proposed generalization, called measure-transformed (MT) GQST assumes a Gaussian probability model after applying a transform to the probability measure (distribution) of the data. The considered measure-transformation is structured by a non-negative data weighting function, called MT-function. By proper selection of the MT-function, we show that, unlike the GQST, the proposed MT-GQST can gain resilience against heavy-tailed noise outliers, leading to significant mitigation of the model mismatch effect (introduced by the normality assumption), and yet, have the implementation advantages of the standard GQST (arising from the convenient Gaussian model). The proposed MT-GQST is applied for testing the vector parameters of linear and nonlinear multivariate data models. Simulation examples illustrate its advantages as compared to the GQST and other robust detectors. (C) 2018 Elsevier B.V. All rights reserved.
机译:当没有准确的参数概率模型时,本文讨论了复合二元假设检验的问题。在此框架下,开发了高斯拟分数测试(GQST)的强大概括。所提出的概括称为度量变换(MT)GQST,它在对数据的概率度量(分布)进行了变换之后,假设了一个高斯概率模型。所考虑的度量转换由称为MT函数的非负数据加权函数构成。通过适当选择MT函数,我们表明,与GQST不同,建议的MT-GQST可以抵抗重尾噪声离群值,从而显着减轻了模型失配效应(由正态性假设引入),并且但是,具有标准GQST的实现优势(源自便捷的高斯模型)。提出的MT-GQST用于测试线性和非线性多元数据模型的矢量参数。仿真示例说明了与GQST和其他鲁棒检测器相比的优势。 (C)2018 Elsevier B.V.保留所有权利。

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