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On resampling and uncertainty estimation in linear system identification

机译:线性系统辨识中的重采样和不确定性估计

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Linear System Identification yields a nominal model parameter, which minimizes a specific criterion based on the single input-output data set. Here we investigate the utility of various methods for estimating the probability distribution of this nominal parameter using only the data from this single experiment. The results are compared to the actual parameter distribution generated by many Monte Carlo runs of the data-collection experiment. The methods considered are collectively known as resampling schemes, which include Subsampling, the Jackknife, and the Bootstrap. The broad aim is to generate an empirical parameter distribution function via the construction of a large number of new data records from the original single set of data, based on an assumption that this data is representative of all possible data, and then to run the parameter estimator on each of these new records to develop the distribution function. The performance of these schemes is evaluated on a difficult, almost unidentifiable system, and compared to the standard results based on asymptotic normality. In addition to the exploration of this example as a means to evaluate the strengths and weaknesses of these resampling schemes, some new theoretical results are proven and demonstrated for Subsampling schemes.
机译:线性系统识别产生名义模型参数,该模型参数基于单个输入输出数据集将特定标准最小化。在这里,我们调查仅使用来自该单个实验的数据来估算此标称参数的概率分布的各种方法的实用性。将结果与数据收集实验的许多Monte Carlo运行生成的实际参数分布进行比较。所考虑的方法统称为重采样方案,其中包括子采样,折刀和自举。广泛的目标是通过基于原始单个数据集构造大量新数据记录(假设该数据代表所有可能的数据)来生成经验参数分布函数,然后运行该参数这些新记录中的每一个的估计量,以开发分布函数。这些方案的性能在困难,几乎无法识别的系统上进行评估,并与基于渐近正态性的标准结果进行比较。除了探索本例作为评估这些重采样方案的优缺点的手段外,还为子采样方案证明了一些新的理论结果。

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