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High order neural network based solution for approximating the Average Likelihood Ratio

机译:基于高阶神经网络的近似平均似然比解决方案

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The detection of gaussian signals with unknown correlation coefficient, ρs is considered. A strategy for designing high order neural networks (HONN) in composite hypothesis test is proposed. A HONN trained with ρs varying uniformly in [0, 1] is considered to approximate the Average Likelihood Ratio (ALR). In order to compare the suitability of the approximation, a sub-optimal solution based on constrained generalized likelihood ratio is used. A study of the computational cost is carried out. Results show that a HONN is able to approximate the ALR with a low computational cost.
机译:考虑检测相关系数未知的高斯信号ρ s 。提出了一种在复合假设检验中设计高阶神经网络的策略。以ρ s 均匀变化的[0,1]训练的HONN被认为近似于平均似然比(ALR)。为了比较近似的适用性,使用了基于约束广义似然比的次优解。对计算成本进行了研究。结果表明,HONN能够以较低的计算成本逼近ALR。

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