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Noisy Data and Impulse Response Estimation

机译:噪声数据和冲激响应估计

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This paper investigates the impulse response estimation of linear time-invariant (LTI) systems when only noisy finite-length input-output data of the system is available. The competing parametric candidates are the least square impulse response estimates of possibly different lengths. It is known that the presence of noise prohibits using model sets with large number of parameters as the resulting parameter estimation error can be quite large. Model selection methods acknowledge this problem, hence, they provide metrics to compare estimates in different model classes. Such metrics typically involve a combination of the available least-square output error, which decreases as the number of parameters increases, and a function that penalizes the size of the model. In this paper, we approach the model class selection problem from a different perspective that is closely related to the involved denoising problem. The method primarily focuses on estimating the parameter error in a given model class of finite order using the available least-square output error. We show that such an estimate, which is provided in terms of upper and lower bounds with certain level of confidence, contains the appropriate tradeoffs between the bias and variance of the estimation error. Consequently, these measures can be used as the basis for model comparison and model selection. Furthermore, we demonstrate how this approach reduces to the celebrated AIC method for a specific confidence level. The performance of the method as the noise variance and/or the data length varies is explored, and consistency of the approach as the data length grows is analyzed.
机译:本文研究线性时不变(LTI)系统的脉冲响应估计,当该系统只有嘈杂的有限长度输入/输出数据时才可用。竞争参量候选者是可能具有不同长度的最小二乘脉冲响应估计。众所周知,噪声的存在禁止使用带有大量参数的模型集,因为由此产生的参数估计误差可能会很大。模型选择方法承认了这个问题,因此,它们提供了度量以比较不同模型类别中的估计。这样的度量通常涉及以下方面的组合:可用的最小二乘输出误差(随参数数量的增加而减小)和惩罚模型大小的函数。在本文中,我们从与涉及的降噪问题密切相关的不同角度来处理模型类别选择问题。该方法主要集中在使用可用的最小二乘输出误差来估计给定有限阶模型类中的参数误差。我们表明,以一定置信度的上下限提供的这种估计包含估计误差的偏差和方差之间的适当折衷。因此,这些措施可以用作模型比较和模型选择的基础。此外,我们演示了该方法如何针对特定的置信度降低为著名的AIC方法。探索了该方法在噪声方差和/或数据长度变化时的性能,并分析了随着数据长度增长该方法的一致性。

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