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Nonparametric Detection of Signals by Information Theoretic Criteria: Performance Analysis and an Improved Estimator

机译:通过信息理论标准进行信号的非参数检测:性能分析和改进的估计器

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Determining the number of sources from observed data is a fundamental problem in many scientific fields. In this paper we consider the nonparametric setting, and focus on the detection performance of two popular estimators based on information theoretic criteria, the Akaike information criterion (AIC) and minimum description length (MDL). We present three contributions on this subject. First, we derive a new expression for the detection performance of the MDL estimator, which exhibits a much closer fit to simulations in comparison to previous formulas. Second, we present a random matrix theory viewpoint of the performance of the AIC estimator, including approximate analytical formulas for its overestimation probability. Finally, we show that a small increase in the penalty term of AIC leads to an estimator with a very good detection performance and a negligible overestimation probability.
机译:在许多科学领域中,从观察到的数据中确定来源的数量是一个基本问题。在本文中,我们考虑了非参数设置,并着重于基于信息理论标准,赤池信息标准(AIC)和最小描述长度(MDL)的两种流行估计量的检测性能。我们提出了关于该主题的三篇论文。首先,我们为MDL估计器的检测性能导出了一个新表达式,与以前的公式相比,该表达式与模拟更接近。其次,我们介绍了AIC估计器性能的随机矩阵理论观点,包括其过高估计概率的近似分析公式。最后,我们表明,AIC惩罚项的小幅增长导致估计器具有很好的检测性能,而高估概率可忽略不计。

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